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A novel indirect method for deriving reference intervals through iterative data cleaning guided by self-organizing maps of multi-test patterns (SOM-clean). 提出了一种基于多测试模式自组织映射的迭代数据清理方法(SOM-clean)。
IF 4.8 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-05-01 Epub Date: 2026-02-05 DOI: 10.1016/j.cmpb.2026.109279
Kiyoshi Ichihara, Teppei Yamashita, Anwar Borai

Background & objective: Most existing methods for indirectly deriving reference intervals (RIs) from routine laboratory databases use univariate approaches with limited or no rigorous data cleaning. Recognizing the potential of multivariate data-mining strategies, we developed novel software-SOM-clean-that employs self-organizing map (SOM) clustering for iterative exclusion of records exhibiting atypical multi-test patterns.

Methods: We retrieved records for 22 major health-screening tests (HSTs) from a Saudi Arabian laboratory participating in a RI study. After excluding records from frequently tested individuals and those with <10 HST results, 37,285 records remained for analysis. Initial crude RIs were calculated parametrically using a two-parameter Box-Cox power transformation. All transformed values were standardized against these RIs to generate uniform-scale values, so that any result within RI limits fell between ±1.96. The self-organizing map (m × m cells, m = 5-8) was initialized with normal random values, and records were clustered into cells with highest similarity. Cells' patterns were updated by records assigned to each of them. This learning process of the map was repeated until equilibrium. Subsequently, cells exhibiting atypical features were excluded, and RIs were recalculated using records from the remaining cells. This process was repeated iteratively until all RIs stabilized.

Results: Histograms of retrieved results frequently exhibited peaks differing in shape and location from those in the direct study (n = 880). The goodness-of-fit (GOF) of SOM-clean RIs was assessed by skewness, kurtosis, and Kolmogorov-Smirnov test P-values after transformation, as well as by the bias ratio of reference limits compared with the direct study. GOF depended on map size and criteria for identifying atypical cells; the software therefore incorporated an all-inclusive search for optimal conditions referencing the direct study RIs. By using the optimal settings, SOM-clean achieved excellent GOF of RIs simultaneously across nearly all HSTs, indicating conformity of the estimated RIs to the healthy status. In comparison, RIs derived using a representative indirect method (refineR) were generally broader or biased, particularly for tests with highly skewed distributions.

Conclusion: SOM-clean represents a practical and robust parametric tool for estimating RIs indirectly from routine laboratory data employing a novel multivariate-based data cleaning scheme.

背景与目的:大多数现有的从常规实验室数据库间接导出参考区间(RIs)的方法使用单变量方法,数据清理有限或没有严格的数据清理。认识到多元数据挖掘策略的潜力,我们开发了新的软件SOM-clean,该软件使用自组织映射(SOM)聚类来迭代排除显示非典型多测试模式的记录。方法:我们从参与国际扶轮研究的沙特阿拉伯实验室检索了22项主要健康筛查试验(HSTs)的记录。在排除频繁测试的个体和那些有结果的记录后:检索结果的直方图经常显示出与直接研究中的峰在形状和位置上不同的峰(n = 880)。通过变换后的偏度、峰度和Kolmogorov-Smirnov检验p值,以及参考限与直接研究的偏倚比来评估SOM-clean RIs的拟合优度(GOF)。GOF依赖于图谱大小和非典型细胞的鉴定标准;因此,该软件结合了参考直接研究RIs的最佳条件的全包搜索。通过使用最优设置,SOM-clean在几乎所有hst中同时获得了良好的RIs GOF,表明估计的RIs符合健康状态。相比之下,使用代表性间接方法(refineR)得出的RIs通常更宽或有偏差,特别是对于具有高度倾斜分布的测试。结论:SOM-clean是一种实用且稳健的参数化工具,它采用一种新颖的基于多变量的数据清洗方案,从常规实验室数据间接估计RIs。
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引用次数: 0
Computational hemodynamic analysis of idealized coronary arteries with cylindrical and conical stents. 理想冠状动脉柱状和锥形支架的血流动力学计算分析。
IF 4.8 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-05-01 Epub Date: 2026-02-12 DOI: 10.1016/j.cmpb.2026.109285
Kristian Nascimento Telöken, Isadora Damasceno Ghisleni, Flavia Schwarz Franceschini Zinani, Diego Pacheco Wermuth

Background and objective: In Brazil, coronary angioplasty with stent implantation is a primary intervention for cardiovascular diseases, yet in-stent restenosis remains a significant complication. Recent proposals suggest transitioning from traditional cylindrical stents to conical geometries to better align with vascular physiology. This study aims to compare the performance of cylindrical and conical stents and investigate the influence of varying strut thicknesses on hemodynamic parameters.

Methods: The study employed computational modeling using both Fluid-Structure Interaction (FSI) and Computational Fluid Dynamics (CFD) simulations to quantify hemodynamic parameters including Time-Averaged Wall Shear Stress (TAWSS), Oscillatory Shear Index (OSI), and Relative Residence Time (RRT). A total of 12 simulations were performed (6 FSI and 6 CFD) on models of cylindrical and conical arteries with stent strut thicknesses ranging from 0.1 mm to 0.3 mm. The finite volume method was used for the fluid domain, while the finite element method was applied to the solid domain (arterial wall and stent). Blood was modeled as a non-Newtonian fluid using the Carreau model, with Reynolds numbers from 251 to 381 and Womersley numbers from 2.23 to 3.78.

Results: Quantitative analysis revealed that rigid-wall CFD consistently underestimates the risk of restenosis compared to FSI. Specifically, FSI predicted areas of critical Time-Averaged Wall Shear Stress (TAWSS ≤ 1 Pa) that were 12% to 46% larger than those predicted by CFD. Strut thickness emerged as a dominant factor; increasing thickness to 0.3 mm resulted in WSS values approximately three times lower than the 0.1 mm models, significantly expanding recirculation zones. Regarding geometry, while cylindrical stents exhibited concentrated high Oscillatory Shear Index (OSI) at the distal edge, conical stents demonstrated a more distributed OSI pattern and a markedly improved Relative Residence Time profile, reducing peak RRT at the distal edge by approximately 60% compared to cylindrical models (12.25Pa-1 vs. 29.94Pa-1), thereby mitigating stagnation and potential edge restenosis.

Conclusions: The findings confirm that neglecting arterial compliance (CFD only) leads to a substantial underestimation of hemodynamic risk. Both stent geometry and strut thickness are critical; while conical stents offer better risk distribution, thicker struts can negate these benefits. Optimizing these parameters is essential for next-generation stent designs.

背景与目的:在巴西,冠状动脉血管成形术合并支架植入术是心血管疾病的主要干预措施,但支架内再狭窄仍然是一个重要的并发症。最近的建议建议从传统的圆柱形支架过渡到圆锥形支架,以更好地符合血管生理学。本研究旨在比较圆柱形和锥形支架的性能,并研究不同支架厚度对血流动力学参数的影响。方法:采用流体-结构相互作用(FSI)和计算流体动力学(CFD)模拟计算建模,量化血流动力学参数,包括时间平均壁面剪切应力(TAWSS)、振荡剪切指数(OSI)和相对停留时间(RRT)。共对柱状动脉和锥形动脉模型进行了12次模拟(6次FSI和6次CFD),支架支撑厚度范围为0.1 ~ 0.3 mm。流体领域采用有限体积法,固体领域(动脉壁和支架)采用有限元法。血液用卡罗模型建模为非牛顿流体,雷诺数从251到381,沃默斯利数从2.23到3.78。结果:定量分析显示,与FSI相比,刚性壁CFD始终低估了再狭窄的风险。具体而言,FSI预测的临界时间平均壁剪应力(TAWSS≤1 Pa)区域比CFD预测的大12%至46%。支撑层厚度成为主要影响因素;当厚度增加到0.3 mm时,WSS值比0.1 mm时降低了约3倍,显著扩大了再循环区域。在几何结构方面,圆柱形支架在远端边缘表现出集中的高振荡剪切指数(OSI),而锥形支架则表现出更分散的OSI模式和显著改善的相对停留时间曲线,与圆柱形支架相比,远端边缘的峰值RRT减少了约60% (12.25Pa-1 vs. 29.94Pa-1),从而减轻了停滞和潜在的边缘再狭窄。结论:研究结果证实,忽视动脉顺应性(仅CFD)会导致对血流动力学风险的严重低估。支架的几何形状和支撑厚度都很关键;虽然锥形支架提供了更好的风险分配,但较厚的支架会抵消这些好处。优化这些参数对下一代支架设计至关重要。
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引用次数: 0
Assessment of socioeconomic and demographic risk factors for low birth weight using model-agnostic explainable ensembles. 使用模型不可知的可解释集合评估低出生体重的社会经济和人口危险因素。
IF 4.8 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-03-04 DOI: 10.1016/j.cmpb.2026.109303
Md Amir Hamja, Mahmudul Hasan, Maknun Jahan, Md Ziaul Hassan

Background and objective: Low birth weight (LBW) is a major global public health concern, strongly linked to neonatal morbidity and long-term health complications. Early prediction of LBW is essential to reduce neonatal mortality and guide targeted healthcare interventions. This study proposes a predictive framework integrating machine learning (ML), deep learning (DL), and model-agnostic eXplainable Artificial Intelligence (XAI) to identify key socioeconomic and demographic determinants of LBW.

Methods: Data from the Bangladesh Demographic and Health Survey (BDHS), comprising 1574 participants and 12 variables, are analyzed. Key predictors included maternal age, education, household wealth, geographic region, birth order, and maternal BMI. Chi-square tests assess variable associations. A stacking ensemble model, SmartFusion-LR5, is developed, combining K-Nearest Neighbors, Logistic Regression (LR), Decision Tree, Random Forest, and Naive Bayes, with LR as the meta-learner. Model performance is evaluated using accuracy, precision, recall, area under the curve (AUC), F1-score, and Matthews correlation coefficient (MCC).

Results: Significant disparities in LBW prevalence are observed across geographic divisions, with higher parental education and socioeconomic status associated with healthier outcomes. The SmartFusion-LR5 model achieves the highest overall discriminative capability compared to baselines, attaining 93.0% accuracy, 86.7% precision, 99.8% recall, 92.8% F1-score, 94.0% AUC, and an MCC of 86.0%. Comparable performance also obtained from SmartFusion-XGB4 (91.8% accuracy, 86.2% precision, 99.6% recall, 92.4% F1-score, 92.2% AUC, MCC 84.8%) and SmartFusion-RF4 (91.7% accuracy, 86.2% precision, 99.2% recall, 92.2% F1-score, 92.0% AUC, MCC 84.4%). Global XAI methods identified age at first birth, division, residence, wealth, and husband's education as key determinants, while local explanations revealed individual feature impacts.

Conclusions: The proposed framework offers a robust, interpretable, and scalable approach for early LBW risk prediction, supporting targeted maternal and child health interventions in resource-constrained settings.

背景和目的:低出生体重(LBW)是一个主要的全球公共卫生问题,与新生儿发病率和长期健康并发症密切相关。早期预测低体重对于降低新生儿死亡率和指导有针对性的卫生保健干预至关重要。本研究提出了一个整合机器学习(ML)、深度学习(DL)和模型不可知的可解释人工智能(XAI)的预测框架,以确定LBW的关键社会经济和人口统计学决定因素。方法:分析来自孟加拉国人口与健康调查(BDHS)的数据,包括1574名参与者和12个变量。主要预测因素包括母亲的年龄、教育程度、家庭财富、地理区域、出生顺序和母亲的体重指数。卡方检验评估变量间的关联。将k近邻、逻辑回归(LR)、决策树、随机森林和朴素贝叶斯相结合,以LR为元学习器,开发了一种堆叠集成模型SmartFusion-LR5。模型的性能通过准确性、精密度、召回率、曲线下面积(AUC)、f1得分和马修斯相关系数(MCC)来评估。结果:LBW患病率在不同地理区域存在显著差异,父母的教育程度和社会经济地位越高,结果越健康。与基线相比,SmartFusion-LR5模型具有最高的整体判别能力,准确率为93.0%,精密度为86.7%,召回率为99.8%,f1评分为92.8%,AUC为94.0%,MCC为86.0%。SmartFusion-XGB4(准确率91.8%,精密度86.2%,召回率99.6%,F1-score 92.4%, AUC 92.2%, MCC 84.8%)和SmartFusion-RF4(准确率91.7%,精密度86.2%,召回率99.2%,F1-score 92.2%, AUC 92.0%, MCC 84.4%)也获得了相当的性能。全球XAI方法确定了头胎年龄、分工、居住地、财富和丈夫的教育程度是关键决定因素,而当地解释则揭示了个体特征的影响。结论:提出的框架为LBW的早期风险预测提供了一个强大的、可解释的和可扩展的方法,支持在资源有限的环境中有针对性的孕产妇和儿童健康干预措施。
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引用次数: 0
Integrating multimodal data and deep learning for functional assessment and rehabilitation prediction after cerebral hemorrhage. 将多模态数据与深度学习相结合用于脑出血后功能评估与康复预测。
IF 4.8 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-03-01 DOI: 10.1016/j.cmpb.2026.109306
Xuemin Liu, Yu He, Ziliang Wang, Mengdi Huang, Xueyong Liu

Background: Intracerebral hemorrhage (ICH) is a leading cause of long-term disability, particularly in China. Post-stroke motor recovery exhibits considerable heterogeneity, presenting substantial challenges for clinicians in establishing realistic goals. While integrative AI paradigms have shown success in other complex medical domains, existing models often rely on single-modality data, limiting their predictive accuracy and clinical utility. This study aims to develop and validate a multimodal predictive model integrating CT imaging, clinical data, and rehabilitation assessments to simultaneously predict motor recovery and global rehabilitation outcomes following cerebral hemorrhage.

Methods: We conducted a retrospective study involving 739 patients (315 for motor function prediction and 424 for rehabilitation outcome assessment) who received rehabilitation therapy after cerebral hemorrhage. To predict motor function, we constructed a late-fusion deep learning model leveraging 3D-DenseNet for CT neuroimaging and Multi-Layer Perceptron (MLP) for clinical and laboratory features. To predict rehabilitation outcomes, a Gradient Boosting Decision Tree (GBDT) model was developed and validated using 5-fold and 10-fold cross-validation, comparing it against other machine learning algorithms, including SVR, Random Forest and AdaBoost. Model performance was assessed using metrics including AUC and R². Additionally, univariate and multivariate regression analysis were performed to identify significant factors influencing motor recovery and rehabilitation outcomes.

Results: A total of 739 patients were included. The multimodal fusion model achieved an AUC of 0.856 (95 % CI: 0.741-0.971) and an F1 score of 0.897 (95 % CI: 0.819-0.975), significantly outperforming the imaging-only (AUC: 0.833) and clinical-only (AUC: 0.749) models. For rehabilitation outcome prediction, the GBDT model achieved an R2 of 0.849 (95 % CI: 0.803-0.887), demonstrating superior stability and accuracy over other models. Additionally, multivariate analysis revealed that serum albumin (ALB), neutrophil percentage (NEUT%), triglycerides (TG), and thrombin time (TT) were independent predictors of motor recovery, while age, admission mBI, and time to start rehabilitation significantly influenced functional outcomes.

Conclusion: This study confirms that a multimodal deep learning framework integrating routinely available CT imaging and clinical biomarkers provides high predictive value for simultaneously forecasting motor recovery and global functional outcomes after ICH. This proof-of-concept approach offers a reproducible, data-driven tool for early risk stratification, facilitating the formulation of individualized rehabilitation strategies and optimizing resource allocation in clinical workflows.

背景:脑出血(ICH)是导致长期残疾的主要原因,尤其是在中国。脑卒中后运动恢复表现出相当大的异质性,为临床医生制定现实目标提出了重大挑战。虽然综合人工智能范例在其他复杂的医学领域取得了成功,但现有模型往往依赖于单模态数据,限制了它们的预测准确性和临床实用性。本研究旨在建立并验证一种综合CT成像、临床数据和康复评估的多模式预测模型,以同时预测脑出血后的运动恢复和整体康复结果。方法:我们对739例脑出血后接受康复治疗的患者进行回顾性研究,其中315例用于运动功能预测,424例用于康复结果评估。为了预测运动功能,我们构建了一个后期融合深度学习模型,利用3D-DenseNet进行CT神经成像,利用多层感知器(MLP)进行临床和实验室特征分析。为了预测康复结果,研究人员开发了梯度增强决策树(GBDT)模型,并使用5倍和10倍交叉验证对其进行了验证,并将其与其他机器学习算法(包括SVR、Random Forest和AdaBoost)进行了比较。使用AUC和R²等指标评估模型性能。此外,进行单因素和多因素回归分析,以确定影响运动恢复和康复结果的显著因素。结果:共纳入739例患者。多模态融合模型的AUC为0.856 (95% CI: 0.741-0.971), F1评分为0.897 (95% CI: 0.819-0.975),明显优于单纯成像(AUC: 0.833)和单纯临床(AUC: 0.749)模型。对于康复预后预测,GBDT模型的R2为0.849 (95% CI: 0.803-0.887),显示出优于其他模型的稳定性和准确性。此外,多变量分析显示,血清白蛋白(ALB)、中性粒细胞百分比(NEUT%)、甘油三酯(TG)和凝血酶时间(TT)是运动恢复的独立预测因子,而年龄、入院mBI和开始康复的时间显著影响功能结局。结论:本研究证实,结合常规CT成像和临床生物标志物的多模态深度学习框架对于同时预测ICH后的运动恢复和整体功能结果具有很高的预测价值。这种概念验证方法为早期风险分层提供了可重复的、数据驱动的工具,促进了个性化康复策略的制定,并优化了临床工作流程中的资源分配。
{"title":"Integrating multimodal data and deep learning for functional assessment and rehabilitation prediction after cerebral hemorrhage.","authors":"Xuemin Liu, Yu He, Ziliang Wang, Mengdi Huang, Xueyong Liu","doi":"10.1016/j.cmpb.2026.109306","DOIUrl":"https://doi.org/10.1016/j.cmpb.2026.109306","url":null,"abstract":"<p><strong>Background: </strong>Intracerebral hemorrhage (ICH) is a leading cause of long-term disability, particularly in China. Post-stroke motor recovery exhibits considerable heterogeneity, presenting substantial challenges for clinicians in establishing realistic goals. While integrative AI paradigms have shown success in other complex medical domains, existing models often rely on single-modality data, limiting their predictive accuracy and clinical utility. This study aims to develop and validate a multimodal predictive model integrating CT imaging, clinical data, and rehabilitation assessments to simultaneously predict motor recovery and global rehabilitation outcomes following cerebral hemorrhage.</p><p><strong>Methods: </strong>We conducted a retrospective study involving 739 patients (315 for motor function prediction and 424 for rehabilitation outcome assessment) who received rehabilitation therapy after cerebral hemorrhage. To predict motor function, we constructed a late-fusion deep learning model leveraging 3D-DenseNet for CT neuroimaging and Multi-Layer Perceptron (MLP) for clinical and laboratory features. To predict rehabilitation outcomes, a Gradient Boosting Decision Tree (GBDT) model was developed and validated using 5-fold and 10-fold cross-validation, comparing it against other machine learning algorithms, including SVR, Random Forest and AdaBoost. Model performance was assessed using metrics including AUC and R². Additionally, univariate and multivariate regression analysis were performed to identify significant factors influencing motor recovery and rehabilitation outcomes.</p><p><strong>Results: </strong>A total of 739 patients were included. The multimodal fusion model achieved an AUC of 0.856 (95 % CI: 0.741-0.971) and an F1 score of 0.897 (95 % CI: 0.819-0.975), significantly outperforming the imaging-only (AUC: 0.833) and clinical-only (AUC: 0.749) models. For rehabilitation outcome prediction, the GBDT model achieved an R<sup>2</sup> of 0.849 (95 % CI: 0.803-0.887), demonstrating superior stability and accuracy over other models. Additionally, multivariate analysis revealed that serum albumin (ALB), neutrophil percentage (NEUT%), triglycerides (TG), and thrombin time (TT) were independent predictors of motor recovery, while age, admission mBI, and time to start rehabilitation significantly influenced functional outcomes.</p><p><strong>Conclusion: </strong>This study confirms that a multimodal deep learning framework integrating routinely available CT imaging and clinical biomarkers provides high predictive value for simultaneously forecasting motor recovery and global functional outcomes after ICH. This proof-of-concept approach offers a reproducible, data-driven tool for early risk stratification, facilitating the formulation of individualized rehabilitation strategies and optimizing resource allocation in clinical workflows.</p>","PeriodicalId":10624,"journal":{"name":"Computer methods and programs in biomedicine","volume":"279 ","pages":"109306"},"PeriodicalIF":4.8,"publicationDate":"2026-03-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"147372290","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":2,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Continuous vs pulsatile arterial cannula flow for venoarterial extracorporeal membrane oxygenation: A multiscale computational fluid dynamics analysis. 静脉动脉体外膜氧合的连续vs脉动动脉插管流量:多尺度计算流体动力学分析。
IF 4.8 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-02-26 DOI: 10.1016/j.cmpb.2026.109304
Avishka Wickramarachchi, Michael Neidlin, Mehrdad Khamooshi, Jessica Benitez, Eric L Wu, John F Fraser, Shaun D Gregory

Background and objective: Venoarterial extracorporeal membrane oxygenation (VA ECMO) circuits typically utilise a continuous flow (CF) of blood to support patients suffering from refractory cardiorespiratory dysfunction. Pulsatile flow (PF) VA ECMO is an emerging technology being developed to overcome adverse effects associated with non-physiological CF VA ECMO such as worsening of microcirculatory and cardiac function. However, the flow dynamics associated with PF VA ECMO, such as positioning of the watershed region, wall shear stress, and ventricular unloading are still largely unknown. Therefore, to address this gap, our study aimed to utilise computational fluid dynamics (CFD) to compare the arterial cannula flow characteristics generated by CF and PF VA ECMO.

Methods: A multiscale CFD model was created using a patient-specific aortic geometry and employed a closed-loop lumped parameter network as boundary conditions. Mean VA ECMO flow rates of 3, 4, and 5 L/min were simulated for both CF and counter-pulsed PF scenarios.

Results: The hemodynamic results demonstrated increased stroke volume, ejection fraction, and coronary flow during PF VA ECMO, and decreased left ventricular volumes, afterload, and pressure-volume areas, when compared to CF VA ECMO. Delivery of oxygen saturated blood from VA ECMO to the upper body decreased slightly during PF VA ECMO during 4 L/min of support. Lastly, wall shear stress on the aortic wall increased substantially during PF VA ECMO, when compared to CF VA ECMO.

Conclusions: The findings from this study suggest varied hemodynamic and flow dynamic outcomes when comparing CF and PF VA ECMO, each with their own benefits and drawbacks.

背景和目的:静脉体外膜氧合(VA ECMO)电路通常利用连续血流(CF)来支持患有难治性心肺功能障碍的患者。脉动流(PF) VA ECMO是一项新兴技术,旨在克服非生生性CF VA ECMO相关的不良反应,如微循环和心功能恶化。然而,与PF - VA ECMO相关的血流动力学,如分水岭区域的定位、壁剪切应力和心室卸载,在很大程度上仍然未知。因此,为了解决这一差距,我们的研究旨在利用计算流体动力学(CFD)来比较CF和PF VA ECMO产生的动脉插管流动特性。方法:基于患者主动脉的几何形状,建立多尺度CFD模型,采用闭环集总参数网络作为边界条件。在CF和反脉冲PF两种情况下,分别模拟了3、4和5 L/min的VA ECMO平均流速。结果:血流动力学结果显示,与CF - VA ECMO相比,PF - VA ECMO期间卒中容量、射血分数和冠状动脉血流增加,左室容量、后负荷和压力-容积面积减少。在4 L/min的支持下,PF VA ECMO期间VA ECMO向上半身输送的饱和氧血略有下降。最后,与CF VA ECMO相比,PF VA ECMO期间主动脉壁剪切应力显著增加。结论:本研究的结果表明,CF和PF VA ECMO的血流动力学和血流动力学结果不同,各有优缺点。
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引用次数: 0
CardioSynth: Parameter-driven cardiac MRI generation via oriented bounding boxes. CardioSynth:通过定向边界框生成参数驱动的心脏MRI。
IF 4.8 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-02-23 DOI: 10.1016/j.cmpb.2026.109294
Shilajit Banerjee, Oishee Mazumder, Aniruddha Sinha

Background and objective: Cardiac magnetic resonance imaging provides detailed anatomical information but is costly and not feasible for routine monitoring. Accurate control of cardiac substructure areas is essential for studying development, adaptation, and disease progression. This work introduces a framework for synthetic cardiac imaging that enables parameter-driven area modifications using oriented bounding box representations while preserving anatomical plausibility.

Methods: We propose a three-stage framework that integrates: (1) Encoding each cardiac substructure as an oriented bounding box to enable structured representation and easier shape manipulation. (2) A progressive label modification algorithm to apply parameter-driven area changes while maintaining anatomical consistency. (3) A bounding-box-to-segmentation model for reconstructing detailed masks and (4) A diffusion-based segmentation-to-image synthesis model for generating realistic cardiac magnetic resonance images. The oriented bounding box encoding serves as the foundation for controlled anatomical transformations, while the subsequent models ensure structural plausibility and image fidelity.

Results: Experiments show that oriented bounding box encoding enables more accurate control of cardiac substructure area modifications than conventional approaches. Both increments and decrements exhibit a systematic deviation of about 5%, which is effectively corrected by applying a 5% calibrated input, reducing mean errors to within ±1%. Generated images remain anatomically plausible and structurally consistent.

Conclusions: The proposed framework enables parameter-driven cardiac MRI synthesis with precise substructure area control. By combining oriented bounding box encoding, progressive modification, and diffusion modeling, it achieves anatomically consistent results while reducing reliance on repeated scans, supporting applications in longitudinal monitoring and progression studies.

背景和目的:心脏磁共振成像提供详细的解剖信息,但成本高,不适合常规监测。准确控制心脏亚结构区域对于研究发育、适应和疾病进展至关重要。这项工作引入了一个合成心脏成像框架,使参数驱动的区域修改使用定向边界框表示,同时保持解剖学的合理性。方法:我们提出了一个三阶段框架,该框架集成:(1)将每个心脏子结构编码为定向边界框,以实现结构化表示和更容易的形状操作。(2)渐进式标签修改算法,在保持解剖一致性的同时应用参数驱动的区域变化。(3)用于重建详细掩模的边界盒-分割模型;(4)用于生成逼真心脏磁共振图像的基于扩散的分割-图像合成模型。定向边界盒编码作为受控解剖转换的基础,而后续模型确保结构的合理性和图像的保真度。结果:实验表明,定向边界盒编码比传统方法能够更精确地控制心脏亚结构区域的改变。增量和减量都显示出约5%的系统偏差,通过应用5%的校准输入可以有效地纠正,将平均误差降低到±1%以内。生成的图像在解剖学上是合理的,在结构上是一致的。结论:提出的框架使参数驱动的心脏MRI合成具有精确的亚结构区域控制。通过结合定向边界盒编码、渐进式修改和扩散建模,它可以获得解剖学上一致的结果,同时减少对重复扫描的依赖,支持纵向监测和进展研究的应用。
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引用次数: 0
Reliable detection of focal onset impaired awareness seizures in patients with epilepsy using wearable ECG: Development and validation study. 使用可穿戴ECG可靠地检测癫痫患者局灶性意识受损癫痫:开发和验证研究。
IF 4.8 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-02-23 DOI: 10.1016/j.cmpb.2026.109295
Mohamed Alhaskir, Ekaterina Kutafina, Florian Linke, Florian P Fischer, Elisabeth Schriewer, Stephan Lauxmann, Kevin Klett, Julian Hofmeister, Florian Lutz, Lukas Burow, Michal Cicanic, Sara Khosrawikatoli, Stefan Wolking, Thomas Mayer, Sandor Beniczky, Josua Kegele, Rainer Röhrig, Henner Koch, Yvonne Weber
<p><strong>Background: </strong>Underreporting of seizures, particularly focal onset impaired awareness seizures (FIAS), compromises the effectiveness of patient care and condition management in patients with epilepsy. Traditional reliance on patient self-reporting can lead to inaccuracies, hindering effective treatment. Wearable-based seizure detection algorithms offer a promising solution, however, developing an efficient method for detecting FIAS remains a challenge. Additionally, as data quality can vary in wearable settings, the absence of continuous data quality assessment poses a concern for the reliability of such algorithms.</p><p><strong>Objective: </strong>The objective of our study is to develop and evaluate the performance and feasibility of FIAS detection algorithm with automatic data quality assessment (ADQA) using a wearable electrocardiography (ECG) device. We will also conduct an exploratory analysis of inter-individual variability in autonomic seizure signatures to identify potential future candidates, or "responders" to this system. Performance will be evaluated using sensitivity, false alarm rate per 24 h (FAR/24), positive predictive value, and F1-Score.</p><p><strong>Methods: </strong>A multicenter study was conducted across three epilepsy centers and recruited patients of all ages who were admitted to video-EEG monitoring for a minimum of 24 h consecutively. Data were collected using a wearable ECG device. The algorithm involved R-peak detection to identify heartbeats, extraction of knowledge domain heart rate variability features, ADQA, heart rate (HR) filter to address class imbalance, and a deep learning model for the final detection step. The algorithm was validated in a leave-one-patient-out (LOPO) approach using expert-labeled ictal events from video-EEG monitoring as ground truth.</p><p><strong>Results: </strong>A total of 236 patients were recruited, of whom 49 patients experienced at least one FIAS, resulting in 3278 h of ECG data and 260 seizures. Two patients with 33 seizures were excluded due to a technical error in the recording files, leaving 47 patients for analysis. After data quality screening, 161 seizures from 38 patients met the quality criteria. In this group, the median sensitivity was 66.6% (95% CI:33.3%-100%) with a median FAR/24 of 5.2 (95% CI:3.5-8.2). An exploratory responder analysis identified 20 patients with a detection sensitivity of ≥66.6%, for whom the median sensitivity was 100% (95% CI: 92%-100%) and the median FAR/24 was 4.3 (95% CI: 3-7). Finally, removing ADQA from the test data reduced the algorithm's reliability, while removing it from training and test data reduced sensitivity, robustness, and reliability.</p><p><strong>Conclusions: </strong>The proposed algorithm demonstrated reasonable performance in patients whose wearable ECG data met the ADQA quality criteria (n = 38), with the highest detection performance observed in an exploratory responder subgroup (n = 20). These findings
背景:癫痫发作,特别是局灶性意识受损癫痫(FIAS)的漏报影响了癫痫患者护理和病情管理的有效性。传统上对患者自我报告的依赖可能导致不准确,阻碍有效治疗。基于可穿戴设备的癫痫检测算法提供了一个很有前途的解决方案,然而,开发一种有效的检测FIAS的方法仍然是一个挑战。此外,由于数据质量在可穿戴环境中可能会有所不同,因此缺乏连续的数据质量评估会对此类算法的可靠性产生影响。目的:我们研究的目的是开发和评估使用可穿戴心电图(ECG)设备的FIAS自动数据质量评估(ADQA)检测算法的性能和可行性。我们还将对自主神经发作特征的个体间变异性进行探索性分析,以确定潜在的未来候选人或该系统的“应答者”。将使用灵敏度、每24小时误报率(FAR/24)、阳性预测值和F1-Score来评估性能。方法:在三个癫痫中心进行了一项多中心研究,招募了所有年龄的患者,这些患者至少连续24小时接受视频脑电图监测。使用可穿戴ECG设备收集数据。该算法包括识别心跳的r峰检测、知识域心率变异性特征的提取、ADQA、心率(HR)过滤器以解决类不平衡问题,以及最后检测步骤的深度学习模型。该算法使用专家标记的视频-脑电图监测的关键事件作为基础事实,在留一患者出局(LOPO)方法中进行了验证。结果:共招募了236例患者,其中49例患者经历了至少一次FIAS,导致3278小时的心电图数据和260次癫痫发作。由于记录文件中的技术错误,33次癫痫发作的2例患者被排除在外,留下47例患者进行分析。经过数据质量筛选,38例患者的161次癫痫发作符合质量标准。在该组中,中位敏感性为66.6% (95% CI:33.3%-100%),中位FAR/24为5.2 (95% CI:3.5-8.2)。探索性应答分析确定了20例检测灵敏度≥66.6%的患者,其中中位灵敏度为100% (95% CI: 92%-100%),中位FAR/24为4.3 (95% CI: 3-7)。最后,从测试数据中删除ADQA会降低算法的可靠性,而从训练和测试数据中删除ADQA会降低算法的灵敏度、鲁棒性和可靠性。结论:本文提出的算法在可穿戴心电图数据符合ADQA质量标准的患者(n = 38)中表现合理,在探索性应答亚组(n = 20)中检测性能最高。这些发现强调了基于ecg的可穿戴系统在改善FIAS监测方面的潜力,并强调了数据质量在确保可靠算法性能方面的重要性。试验注册:德国临床试验注册:DRKS00026939。
{"title":"Reliable detection of focal onset impaired awareness seizures in patients with epilepsy using wearable ECG: Development and validation study.","authors":"Mohamed Alhaskir, Ekaterina Kutafina, Florian Linke, Florian P Fischer, Elisabeth Schriewer, Stephan Lauxmann, Kevin Klett, Julian Hofmeister, Florian Lutz, Lukas Burow, Michal Cicanic, Sara Khosrawikatoli, Stefan Wolking, Thomas Mayer, Sandor Beniczky, Josua Kegele, Rainer Röhrig, Henner Koch, Yvonne Weber","doi":"10.1016/j.cmpb.2026.109295","DOIUrl":"https://doi.org/10.1016/j.cmpb.2026.109295","url":null,"abstract":"&lt;p&gt;&lt;strong&gt;Background: &lt;/strong&gt;Underreporting of seizures, particularly focal onset impaired awareness seizures (FIAS), compromises the effectiveness of patient care and condition management in patients with epilepsy. Traditional reliance on patient self-reporting can lead to inaccuracies, hindering effective treatment. Wearable-based seizure detection algorithms offer a promising solution, however, developing an efficient method for detecting FIAS remains a challenge. Additionally, as data quality can vary in wearable settings, the absence of continuous data quality assessment poses a concern for the reliability of such algorithms.&lt;/p&gt;&lt;p&gt;&lt;strong&gt;Objective: &lt;/strong&gt;The objective of our study is to develop and evaluate the performance and feasibility of FIAS detection algorithm with automatic data quality assessment (ADQA) using a wearable electrocardiography (ECG) device. We will also conduct an exploratory analysis of inter-individual variability in autonomic seizure signatures to identify potential future candidates, or \"responders\" to this system. Performance will be evaluated using sensitivity, false alarm rate per 24 h (FAR/24), positive predictive value, and F1-Score.&lt;/p&gt;&lt;p&gt;&lt;strong&gt;Methods: &lt;/strong&gt;A multicenter study was conducted across three epilepsy centers and recruited patients of all ages who were admitted to video-EEG monitoring for a minimum of 24 h consecutively. Data were collected using a wearable ECG device. The algorithm involved R-peak detection to identify heartbeats, extraction of knowledge domain heart rate variability features, ADQA, heart rate (HR) filter to address class imbalance, and a deep learning model for the final detection step. The algorithm was validated in a leave-one-patient-out (LOPO) approach using expert-labeled ictal events from video-EEG monitoring as ground truth.&lt;/p&gt;&lt;p&gt;&lt;strong&gt;Results: &lt;/strong&gt;A total of 236 patients were recruited, of whom 49 patients experienced at least one FIAS, resulting in 3278 h of ECG data and 260 seizures. Two patients with 33 seizures were excluded due to a technical error in the recording files, leaving 47 patients for analysis. After data quality screening, 161 seizures from 38 patients met the quality criteria. In this group, the median sensitivity was 66.6% (95% CI:33.3%-100%) with a median FAR/24 of 5.2 (95% CI:3.5-8.2). An exploratory responder analysis identified 20 patients with a detection sensitivity of ≥66.6%, for whom the median sensitivity was 100% (95% CI: 92%-100%) and the median FAR/24 was 4.3 (95% CI: 3-7). Finally, removing ADQA from the test data reduced the algorithm's reliability, while removing it from training and test data reduced sensitivity, robustness, and reliability.&lt;/p&gt;&lt;p&gt;&lt;strong&gt;Conclusions: &lt;/strong&gt;The proposed algorithm demonstrated reasonable performance in patients whose wearable ECG data met the ADQA quality criteria (n = 38), with the highest detection performance observed in an exploratory responder subgroup (n = 20). These findings","PeriodicalId":10624,"journal":{"name":"Computer methods and programs in biomedicine","volume":"279 ","pages":"109295"},"PeriodicalIF":4.8,"publicationDate":"2026-02-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"147324970","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":2,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
A multimodal data-based model for breast cancer diagnosis. 基于多模态数据的乳腺癌诊断模型。
IF 4.8 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-02-23 DOI: 10.1016/j.cmpb.2026.109288
Huina Wang, Lan Wei, Jianqiang Li, Bo Liu, Juan Fang, Catherine Mooney

Background and objective: Developing multimodal data-driven diagnostic systems has become a key clinical strategy for improving breast cancer outcomes. However, effectively modeling multimodal features remains challenging due to substantial semantic heterogeneity, scale discrepancies, and the inherent difficulty of cross-modal alignment. Although existing studies have proposed various multimodal fusion methods, most rely on direct feature concatenation or shallow integration, which fail to capture fine-grained intra-modality semantics as well as the complex interactions between histopathological and genomic modalities.

Methods: In this study, we propose a multimodal diagnostic framework based on Feature Enhancement and Semantic Collaborative Alignment (FESCA). The method incorporates a semantic-guided modality feature enhancement mechanism that effectively extracts and strengthens diagnostic cues from both pathological images and genomic data. In addition, a contrastive-learning-based cross-modal alignment strategy is introduced to map heterogeneous modalities into a unified semantic space and achieve deep semantic collaboration through contrastive optimization. To ensure robust breast cancer classification under varying modality availability, a multimodal collaborative diagnostic strategy is employed to dynamically adapt the feature representations.

Results: We evaluate FESCA on the TCGA-BRCA dataset, and the experimental results demonstrate that it outperforms state-of-the-art methods in breast cancer classification while significantly improving both intra-modality representation quality and cross-modal semantic alignment.

Conclusion: To enhance accessibility and practical application, we developed a web-based breast cancer pathological staging diagnosis system to visualize and deploy the FESCA model, demonstrating a step toward clinical application and providing a benchmark for other research methods.

背景与目的:发展多模式数据驱动诊断系统已成为改善乳腺癌预后的关键临床策略。然而,由于大量的语义异质性、尺度差异和跨模态对齐的固有困难,有效地建模多模态特征仍然具有挑战性。虽然现有的研究提出了各种多模态融合方法,但大多数依赖于直接的特征连接或浅整合,无法捕获细粒度的模态内语义以及组织病理和基因组模态之间的复杂相互作用。方法:提出了一种基于特征增强和语义协同对齐(FESCA)的多模态诊断框架。该方法结合了一种语义引导的模态特征增强机制,可以有效地从病理图像和基因组数据中提取和增强诊断线索。此外,引入基于对比学习的跨模态对齐策略,将异构模态映射到统一的语义空间中,通过对比优化实现深度语义协作。为了保证不同模式下乳腺癌分类的鲁棒性,采用多模式协同诊断策略对特征表示进行动态调整。结果:我们在TCGA-BRCA数据集上对FESCA进行了评估,实验结果表明,FESCA在乳腺癌分类方面优于最先进的方法,同时显著提高了模态内表征质量和跨模态语义对齐。结论:为了提高可及性和实际应用,我们开发了基于web的乳腺癌病理分期诊断系统,将FESCA模型可视化部署,向临床应用迈出了一步,并为其他研究方法提供了基准。
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引用次数: 0
Hemodynamic characteristics of type I Endoleak and intra-prosthetic thrombus following endovascular aneurysm repair: A computational fluid dynamics study. 血管内动脉瘤修复后I型内漏和假体内血栓的血流动力学特征:计算流体动力学研究。
IF 4.8 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-02-22 DOI: 10.1016/j.cmpb.2026.109292
Jun Wen, Fei Yuan, Wenrui Li, Qingyuan Huang, Hailei Li, Hai Feng, Mingyuan Liu

Background: Endovascular aneurysm repair (EVAR) is preferred for abdominal aortic aneurysms (AAAs) due to minimal invasiveness, but complications like Type I endoleaks (T1EL) and intra-prosthetic thrombus (IPT) persist. While current risk prediction routinely involves anatomical assessment, the specific postoperative hemodynamic environments associated with these distinct complications remain under-investigated.

Methods: This study integrates patient-specific computed tomography (CT) angiography with a computational fluid dynamics (CFD)-based thrombus growth model to analyze postoperative geometries in 12 patients divided into three groups: T1EL, IPT, and no complications (Control). Key hemodynamic descriptors included flow patterns, wall shear stress (WSS), helicity, pressure gradients, and predicted thrombus distribution.

Results: T1EL patients showed complex flow patterns and distinct pressure gradients near the proximal or distal sealing zones. The IPT group exhibited significantly low time-averaged wall shear stress (TAWSS) and high relative residence time (RRT) within the graft limbs, fostering platelet aggregation. CFD simulations indicated different spatial distributions of potential thrombus formation between groups. Specifically, T1EL cases demonstrated stronger 3D helical flow features, while IPT cases had weaker rotational flow. Notably, graft geometry analysis revealed that cross-limb configurations induced specific flow disturbances distinct from standard configurations.

Conclusions: By combining patient-specific biomechanics and thrombus modeling, this study offers new insights into the distinct flow phenotypes of post-EVAR complications. It highlights hemodynamic descriptors-helicity, TAWSS, oscillatory shear index (OSI), RRT, and endothelial cell activation potential (ECAP)-as potential quantitative metrics to complement anatomical assessment. Findings also suggest cross-limb graft configurations may modulate flow dynamics, potentially increasing thrombotic risk, providing preliminary clinical guidance requiring validation.

背景:血管内动脉瘤修复术(EVAR)因其微创性是腹主动脉瘤(AAAs)的首选,但I型内漏(T1EL)和假体内血栓(IPT)等并发症持续存在。虽然目前的风险预测通常涉及解剖学评估,但与这些不同并发症相关的特定术后血流动力学环境仍有待研究。方法:本研究将患者特异性计算机断层扫描(CT)血管造影与基于计算流体动力学(CFD)的血栓生长模型相结合,分析12例患者的术后几何形状,将其分为三组:T1EL组、IPT组和无并发症组(对照组)。关键的血流动力学描述符包括血流模式、壁面剪切应力(WSS)、螺旋度、压力梯度和预测的血栓分布。结果:T1EL患者在近端和远端封闭区表现出复杂的血流模式和明显的压力梯度。IPT组表现出较低的时间平均壁剪切应力(TAWSS)和较高的移植肢内相对停留时间(RRT),促进了血小板聚集。CFD模拟显示,两组之间血栓形成的空间分布存在差异。其中,T1EL病例表现出较强的三维螺旋流特征,而IPT病例表现出较弱的旋转流特征。值得注意的是,接枝几何分析显示,与标准配置不同,跨肢配置会引起特定的流动干扰。结论:通过结合患者特异性生物力学和血栓建模,本研究为evar后并发症的不同血流表型提供了新的见解。它强调了血流动力学描述因子——螺旋度、TAWSS、振荡剪切指数(OSI)、RRT和内皮细胞激活电位(ECAP)——作为补充解剖学评估的潜在定量指标。研究结果还表明,跨肢移植物配置可能会调节血流动力学,潜在地增加血栓形成风险,这为需要验证的初步临床指导提供了依据。
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引用次数: 0
Explainable machine learning framework for the molecular classification of triple negative breast cancer. 三阴性乳腺癌分子分类的可解释机器学习框架。
IF 4.8 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-02-22 DOI: 10.1016/j.cmpb.2026.109293
Biji C L, Trupti Patel, Devyani Charan, Mangalam Goutam Sinha, Rupaak S, Medhansh Jain, Ashutosh Bhardwaj, Annanya Gupta, Dheeba J, Athira K, Ankita Mishra, Deepak Mishra

Background and objective: The difference in molecular characteristics of Triple negative breast cancer (TNBC) aids in distinguishing between its four prominent subtypes- basal-like 1, basal-like 2, mesenchymal, and luminal androgen receptor. This study presents the first integrative framework that combines explainable AI with machine learning approaches to classify TNBC subtypes. Unlike conventional models, our approach offers interpretability while enabling biomarker prioritization by identifying key hub genes that drive subtype-specific predictions.

Methods: In the experiment 783 cases (BL1 (160), BL2 (75), M (151), LAR (106), non-TNBC (291) reported in Gene Expression Omnibus (GEO) and Genomic Data Commons (GDC) data portal were used for the analysis. The proposed framework comprises modules for the identification of gene signatures for the four-subtype followed by the classification model based on eight different machine learning algorithms. Random Forest classifier was found to be best model with 96 % testing accuracy, which was elected for Explainable framework using Shapley Additive Explanations.

Results: Explainable biomarker module could provide a set of 47 biomarkers which is relevant in distinguishing the four types on triple negative breast cancer. The biomarkers could have the potential to be considered for TNBC prognosis in clinical setting.

Conclusion: Key findings highlight the hub genes CDC20, CDCA2, PIMREG, KIF2C, and CENPW, implicating pathways such as ubiquitin-proteasome signaling and microtubule dynamics. These insights pave the way for biomarker-driven therapies and precision medicine in triple negative breast cancer.

背景与目的:三阴性乳腺癌(TNBC)分子特征的差异有助于区分其四种主要亚型——基底样1型、基底样2型、间充质型和腔内雄激素受体。本研究提出了第一个综合框架,将可解释的人工智能与机器学习方法结合起来,对TNBC亚型进行分类。与传统模型不同,我们的方法提供了可解释性,同时通过识别驱动亚型特异性预测的关键枢纽基因来实现生物标志物的优先级。方法:采用基因表达综合数据库(Gene Expression Omnibus, GEO)和基因组数据共享(Genomic Data Commons, GDC)数据门户中报道的783例(BL1(160)例,BL2(75)例,M(151)例,LAR(106)例,非tnbc(291)例)进行分析。提出的框架包括用于识别四种亚型基因特征的模块,然后是基于八种不同机器学习算法的分类模型。随机森林分类器的测试准确率为96%,被选为Shapley加性解释的可解释框架。结果:可解释生物标志物模块可提供一组47个与三阴性乳腺癌四种类型鉴别相关的生物标志物。这些生物标志物有可能在临床环境中被认为是TNBC预后的潜在因素。结论:关键发现突出了中心基因CDC20, CDCA2, PIMREG, KIF2C和CENPW,涉及泛素-蛋白酶体信号传导和微管动力学等途径。这些见解为三阴性乳腺癌的生物标志物驱动疗法和精准医学铺平了道路。
{"title":"Explainable machine learning framework for the molecular classification of triple negative breast cancer.","authors":"Biji C L, Trupti Patel, Devyani Charan, Mangalam Goutam Sinha, Rupaak S, Medhansh Jain, Ashutosh Bhardwaj, Annanya Gupta, Dheeba J, Athira K, Ankita Mishra, Deepak Mishra","doi":"10.1016/j.cmpb.2026.109293","DOIUrl":"https://doi.org/10.1016/j.cmpb.2026.109293","url":null,"abstract":"<p><strong>Background and objective: </strong>The difference in molecular characteristics of Triple negative breast cancer (TNBC) aids in distinguishing between its four prominent subtypes- basal-like 1, basal-like 2, mesenchymal, and luminal androgen receptor. This study presents the first integrative framework that combines explainable AI with machine learning approaches to classify TNBC subtypes. Unlike conventional models, our approach offers interpretability while enabling biomarker prioritization by identifying key hub genes that drive subtype-specific predictions.</p><p><strong>Methods: </strong>In the experiment 783 cases (BL1 (160), BL2 (75), M (151), LAR (106), non-TNBC (291) reported in Gene Expression Omnibus (GEO) and Genomic Data Commons (GDC) data portal were used for the analysis. The proposed framework comprises modules for the identification of gene signatures for the four-subtype followed by the classification model based on eight different machine learning algorithms. Random Forest classifier was found to be best model with 96 % testing accuracy, which was elected for Explainable framework using Shapley Additive Explanations.</p><p><strong>Results: </strong>Explainable biomarker module could provide a set of 47 biomarkers which is relevant in distinguishing the four types on triple negative breast cancer. The biomarkers could have the potential to be considered for TNBC prognosis in clinical setting.</p><p><strong>Conclusion: </strong>Key findings highlight the hub genes CDC20, CDCA2, PIMREG, KIF2C, and CENPW, implicating pathways such as ubiquitin-proteasome signaling and microtubule dynamics. These insights pave the way for biomarker-driven therapies and precision medicine in triple negative breast cancer.</p>","PeriodicalId":10624,"journal":{"name":"Computer methods and programs in biomedicine","volume":"279 ","pages":"109293"},"PeriodicalIF":4.8,"publicationDate":"2026-02-22","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"147347372","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":2,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
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Computer methods and programs in biomedicine
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