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Corrigendum to "Fully automated quantitative lung ultrasound spectroscopy for the differential diagnosis of lung diseases: The first multicenter in-vivo clinical study" [Comput. Biol. Med. (200), 1 January 2026, 111365]. “用于肺部疾病鉴别诊断的全自动定量肺部超声光谱:第一个多中心体内临床研究”的勘误表[计算机]。医学杂志。医学杂志,2008,26(1):393 - 393。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-02-15 Epub Date: 2026-01-19 DOI: 10.1016/j.compbiomed.2026.111493
Mattia Perpenti, Federico Mento, Giovanni Pierro, Alessandro Perrotta, Tiziano Perrone, Andrea Smargiassi, Riccardo Inchingolo, Libertario Demi
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引用次数: 0
Corrigendum to "Brain dysfunction assessment in Alzheimer's disease: A phase-space projection and interactive signal decomposition framework" [Comput. Biol. Med. (2026) 111440 201]. “阿尔茨海默病脑功能障碍评估:相空间投影和交互信号分解框架”的勘误表[计算机]。医学杂志。医学杂志(2026):111440 [j]。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-02-15 Epub Date: 2026-01-19 DOI: 10.1016/j.compbiomed.2026.111483
Wanus Srimaharaj
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引用次数: 0
Identification of high-risk genes and classification of acute myocardial infarction patients utilizing deep learning in a restricted cohort. 在有限队列中利用深度学习识别急性心肌梗死患者的高危基因和分类
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-02-10 DOI: 10.1016/j.compbiomed.2026.111549
Krish Chaudhary, Narendra N Khanna, Pankaj K Jain, Rajesh Singh, Laura E Mantella, Amer M Johri, Gavino Faa, Mohamed Abbas, John R Laird, Mustafa Al-Maini, Esma R Isenovic, Luca Saba, Jasjit S Suri

Background and motivation: Classifying diseases like heart problems using gene expression data depends on selecting important genes. Traditional machine learning (ML) often uses simple feature selection (FS) techniques, which can limit accuracy. In our research, we combine deep learning (DL) with gene-focused methods like differential expression analysis (DEA) to improve classification performance significantly.

Method: We thoroughly and rigorously evaluated ML and DL classifiers using two gene expression datasets (GSE36961 and GSE57345). We tested four hypotheses using feature selection methods such as chi-square, DEA. We applied principal component analysis (PCA) to reduce the number of features. To ensure the reliability of our findings, we applied k-fold cross-validation, hyperparameter tuning, block effect analysis, and assessed data augmentation and generalization. Statistical tests, including paired t-test and Mann-Whitney U test, and Wilcoxon signed-rank test were performed to compare model performances rigorously.

Results: Our experiments on two gene expression datasets (GSE36961, GSE57345) not only confirmed all four hypotheses (H1, H2, H3, and H4) but also revealed significant performance improvements. For H1, without FS, DL outperformed ML models by a substantial margin. For H2, with FS, DL outperformed ML models by a significant percentage. In H3, ML with FS improved over ML without FS by a considerable margin. For H4, DL with FS outperformed DL without FS by a noticeable percentage. Among FS methods, DEA consistently yielded the best results for both ML and DL, further underlining the significance of our findings.

Conclusions: Combining DL with biological feature selection, especially DEA, improves gene expression classification and enables gene ranking and biomarker identification. This integrative approach balances modeling power with biological relevance, providing a reproducible framework for robust biomarker-based classification.

背景与动机:利用基因表达数据对心脏病等疾病进行分类取决于选择重要基因。传统的机器学习(ML)通常使用简单的特征选择(FS)技术,这可能会限制准确性。在我们的研究中,我们将深度学习(DL)与以基因为中心的方法(如差异表达分析(DEA))相结合,以显着提高分类性能。方法:我们使用两个基因表达数据集(GSE36961和GSE57345)对ML和DL分类器进行了彻底和严格的评估。我们使用卡方、DEA等特征选择方法对四个假设进行了检验。我们应用主成分分析(PCA)来减少特征的数量。为了确保研究结果的可靠性,我们应用了k-fold交叉验证、超参数调整、块效应分析,并评估了数据增强和泛化。采用配对t检验、Mann-Whitney U检验、Wilcoxon sign -rank检验等统计检验对模型性能进行严格比较。结果:我们在两个基因表达数据集(GSE36961, GSE57345)上的实验不仅证实了所有四个假设(H1, H2, H3和H4),而且显示了显著的性能改进。对于H1,没有FS, DL的表现明显优于ML模型。对于H2,使用FS, DL模型的表现明显优于ML模型。在H3中,有FS的ML比没有FS的ML有相当大的改善。对于H4,有FS的DL比没有FS的DL表现出明显的百分比。在FS方法中,DEA对ML和DL均获得最佳结果,进一步强调了我们研究结果的重要性。结论:DL与生物特征选择,特别是DEA相结合,可以改善基因表达分类,实现基因排序和生物标志物鉴定。这种综合方法平衡了建模能力与生物学相关性,为稳健的基于生物标志物的分类提供了可重复的框架。
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引用次数: 0
Modeling the effect of substrate topography on cellular and nuclear deformations. 模拟基质地形对细胞和核变形的影响。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-02-10 DOI: 10.1016/j.compbiomed.2026.111536
Ana Bensabat, Marcos Gouveia, Claire Leclech, João Carvalho, Abdul I Barakat, Rui D M Travasso

As they navigate complex extracellular environments, cells and their nuclei undergo extensive deformation. Recent experiments have demonstrated that vascular endothelial cells cultured on microgroove substrates, which mimic the anisotropic topography of the basement membrane, exhibit complex nuclear deformations, leading to partial or even complete nuclear penetration into the microgrooves. Interestingly, the experiments suggest that nuclear entry into the microgrooves is driven mainly by cellular adhesion and spreading rather than by cytoskeleton-mediated pulling and/or pushing forces. In the present work, we develop a phase-field model to describe endothelial cell deformation on microgroove substrates and characterize the conditions necessary for nuclear confinement within the grooves, a process that has been termed "caging" in the experiments. The model introduces a novel non-local term that prevents the cellular body from fragmenting under conditions of strong adhesion and high curvature. Our numerical simulations show that significant nuclear deformation and partial caging occur for strong cell-substrate adhesion and for nuclear membrane stiffness close to or inferior to that of the cell membrane. We further show that the dimensions of the grooves are critical for the caging process, with increasing groove depth and width favoring nuclear penetration into and caging within the grooves. These results are in close agreement with experimental observations, thus corroborating the notion that cell-substrate adhesion forces can drive large-scale nuclear deformations without the need for cytoskeleton-generated forces.

在复杂的细胞外环境中,细胞及其细胞核经历了广泛的变形。最近的实验表明,在模拟基底膜各向异性地形的微槽基质上培养的血管内皮细胞表现出复杂的核变形,导致核部分甚至完全渗透到微槽中。有趣的是,实验表明细胞核进入微凹槽主要是由细胞粘附和扩散驱动的,而不是由细胞骨架介导的拉力和/或推力驱动的。在目前的工作中,我们开发了一个相场模型来描述微槽基底上的内皮细胞变形,并表征了微槽内核约束所需的条件,这一过程在实验中被称为“笼化”。该模型引入了一种新的非局部项,以防止细胞体在强附着力和高曲率条件下破碎。我们的数值模拟表明,当细胞-基质粘附较强,核膜刚度接近或低于细胞膜刚度时,会发生显著的核变形和部分笼化。我们进一步表明,凹槽的尺寸对保持过程至关重要,随着凹槽深度和宽度的增加,有利于核渗透到凹槽内并在凹槽内保持。这些结果与实验观察结果非常一致,从而证实了细胞-基质粘附力可以在不需要细胞骨架产生力的情况下驱动大规模核变形的概念。
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引用次数: 0
Comment on: "Multimodal large language models as assistance for evaluation of thyroid-associated ophthalmopathy". 评论:“辅助甲状腺相关性眼病评估的多模态大语言模型”。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-02-10 DOI: 10.1016/j.compbiomed.2026.111534
Joonhyeon Park, Kyubo Shin, Jongchan Kim, Jaemin Park, Jae Hoon Moon, JaeSang Ko
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引用次数: 0
Periodontal bone loss analysis via keypoint detection with heuristic post-processing. 启发式后处理关键点检测牙周骨质流失分析。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-02-09 DOI: 10.1016/j.compbiomed.2026.111515
Ryan Banks, Vishal Thengane, María Eugenia Guerrero, Nelly Maria García-Madueño, Yunpeng Li, Hongying Tang, Akhilanand Chaurasia

Objectives: This study proposes a deep learning framework and an annotation methodology for the automatic detection of periodontal bone loss landmarks, associated conditions, and staging. Methods192 periapical radiographs were collected and annotated using a stage agnostic methodology, labelling clinically relevant landmarks regardless of disease presence or extent. We propose a heuristic post-processing module that aligns predicted keypoints to tooth boundaries using an auxiliary instance segmentation model. An evaluation metric, Percentage of Relative Correct Keypoints (PRCK), is proposed to capture keypoint performance in dental imaging domains. Four donor pose estimation models were adapted with fine-tuning for our keypoint problem. Results Post-processing improved fine-grained localisation, raising average PRCK0.05 by +0.028, but reduced coarse performance for PRCK0.25 by -0.0523 and PRCK0.5 by -0.0345. Orientation estimation shows excellent performance for auxiliary segmentation when filtered with either stage 1 object detection model. Periodontal staging was detected sufficiently, with the best mesial and distal Dice scores of 0.508 and 0.489, while furcation involvement and widened periodontal ligament space tasks remained challenging due to scarce positive samples. Scalability is implied with similar validation and external set performance. Conclusion The annotation methodology enables stage agnostic training with balanced representation across disease severities for some detection tasks. The PRCK metric provides a domain-specific alternative to generic pose metrics, while the heuristic post-processing module consistently corrected implausible predictions with occasional catastrophic failures.

Clinical significance: The proposed framework demonstrates the feasibility of clinically interpretable periodontal bone loss assessment, with the potential to reduce diagnostic variability and clinician workload.

目的:本研究提出了一种深度学习框架和注释方法,用于自动检测牙周骨质流失标志、相关条件和分期。方法收集192张根尖周围x线片,采用分期不确定的方法进行注释,标记临床相关标志,无论疾病是否存在或程度如何。我们提出了一个启发式的后处理模块,该模块使用辅助的实例分割模型将预测的关键点对齐到牙齿边界。提出了一种评估指标,相对正确关键点百分比(PRCK),用于捕获牙科成像领域的关键点性能。针对关键点问题,采用四种供体姿态估计模型进行微调。结果后处理改善了细粒度定位,使PRCK0.05平均提高了+0.028,但使PRCK0.25和PRCK0.5的粗粒度定位性能分别降低了-0.0523和-0.0345。当用第一阶段目标检测模型进行滤波时,方向估计在辅助分割方面表现出优异的性能。牙周分期检测充分,近端和远端Dice得分最高,分别为0.508和0.489,但由于阳性样本较少,分叉受累和牙周韧带间隙扩大的任务仍然具有挑战性。可伸缩性隐含在类似的验证和外部集性能中。结论该标注方法能够在某些检测任务中实现跨疾病严重程度均衡表征的阶段不可知论训练。PRCK度量为通用姿态度量提供了特定领域的替代方案,而启发式后处理模块始终如一地纠正了偶尔发生灾难性故障的不可信预测。临床意义:提出的框架证明了临床可解释的牙周骨质流失评估的可行性,具有减少诊断变异性和临床医生工作量的潜力。
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引用次数: 0
Exploring the potential of explainable deep learning for EEG-based cognitive decline prediction. 探索基于脑电图的认知衰退预测中可解释深度学习的潜力。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-02-09 DOI: 10.1016/j.compbiomed.2026.111538
Anna Josefine Grillenberger, Nelly Shenton, Martin Lauritzen, Krisztina Benedek, Sadasivan Puthusserypady

Objective: Detecting Alzheimer's disease (AD) at an early stage is essential for administering effective treatments and preventing neuronal damage. Unfortunately, current diagnostic techniques are often invasive and expensive. Our research focuses on creating a cost-effective and non-invasive method for the early detection of cognitive decline.

Methods: Using a publicly available dataset of resting state electroencephalographic (EEG) data on healthy controls and patients with Mild Cognitive Impairment (MCI), two novel deep learning (DL) algorithms with self-attention mechanisms were developed and evaluated for their performance in predicting MCI and cognitive decline.

Results: Both proposed DL algorithms outperformed a traditional convolutional neural network (CNN) model in predicting MCI, achieving test accuracy improvements of 8.5% and 10%, respectively, while utilizing significantly fewer trainable parameters. An ablation study highlighted the attention layer as a key feature, enhancing model accuracy by 8.5%. Analysis of the attention layers indicated that beta band frequencies (13-30 Hz) were essential for distinguishing MCI from control subjects, highlighting the role of high EEG frequencies in early cognitive deficits. Predicting pre-clinical cognitive decline in healthy subjects proved more challenging than predicting diagnosed MCI. However, using transfer-learning methods, we achieved a test accuracy of 56.08%.

Conclusion: Our models achieved state-of-the-art results in the MCI classification task, and demonstrated learning progress in predicting cognitive decline in the preclinical stage. As this is the first time DL models have been evaluated to classify healthy subjects based on cognitive scores, where brain changes are minimal and difficult to detect, this study opens new avenues for discovering biomarkers in early AD diagnosis and facilitating early interventions. Interpretation of the trained DL attention models provided valuable insights that aligned with the existing brain research, serving as a helpful tool for validating AI in healthcare applications.

目的:早期发现阿尔茨海默病(AD)对于给予有效治疗和预防神经元损伤至关重要。不幸的是,目前的诊断技术往往是侵入性的和昂贵的。我们的研究重点是创造一种具有成本效益和非侵入性的方法来早期检测认知能力下降。方法:利用公开的健康对照和轻度认知障碍(MCI)患者静息状态脑电图(EEG)数据集,开发了两种具有自我注意机制的新型深度学习(DL)算法,并评估了它们在预测轻度认知障碍(MCI)和认知能力下降方面的表现。结果:两种DL算法在预测MCI方面都优于传统的卷积神经网络(CNN)模型,在使用更少的可训练参数的同时,测试准确率分别提高了8.5%和10%。一项消融研究强调了注意力层作为关键特征,将模型精度提高了8.5%。对注意层的分析表明,β频带频率(13-30 Hz)是区分轻度认知障碍和对照组的关键,强调了高脑电图频率在早期认知缺陷中的作用。事实证明,预测健康受试者的临床前认知能力下降比预测诊断为轻度认知障碍的受试者更具挑战性。然而,使用迁移学习方法,我们实现了56.08%的测试准确率。结论:我们的模型在MCI分类任务中取得了最先进的结果,并且在预测临床前阶段的认知衰退方面显示了学习进展。由于这是首次评估DL模型以基于认知评分对健康受试者进行分类,其中大脑变化最小且难以检测,因此该研究为发现早期AD诊断中的生物标志物和促进早期干预开辟了新的途径。对训练好的DL注意力模型的解释提供了与现有大脑研究相一致的有价值的见解,可以作为验证医疗保健应用程序中的AI的有用工具。
{"title":"Exploring the potential of explainable deep learning for EEG-based cognitive decline prediction.","authors":"Anna Josefine Grillenberger, Nelly Shenton, Martin Lauritzen, Krisztina Benedek, Sadasivan Puthusserypady","doi":"10.1016/j.compbiomed.2026.111538","DOIUrl":"https://doi.org/10.1016/j.compbiomed.2026.111538","url":null,"abstract":"<p><strong>Objective: </strong>Detecting Alzheimer's disease (AD) at an early stage is essential for administering effective treatments and preventing neuronal damage. Unfortunately, current diagnostic techniques are often invasive and expensive. Our research focuses on creating a cost-effective and non-invasive method for the early detection of cognitive decline.</p><p><strong>Methods: </strong>Using a publicly available dataset of resting state electroencephalographic (EEG) data on healthy controls and patients with Mild Cognitive Impairment (MCI), two novel deep learning (DL) algorithms with self-attention mechanisms were developed and evaluated for their performance in predicting MCI and cognitive decline.</p><p><strong>Results: </strong>Both proposed DL algorithms outperformed a traditional convolutional neural network (CNN) model in predicting MCI, achieving test accuracy improvements of 8.5% and 10%, respectively, while utilizing significantly fewer trainable parameters. An ablation study highlighted the attention layer as a key feature, enhancing model accuracy by 8.5%. Analysis of the attention layers indicated that beta band frequencies (13-30 Hz) were essential for distinguishing MCI from control subjects, highlighting the role of high EEG frequencies in early cognitive deficits. Predicting pre-clinical cognitive decline in healthy subjects proved more challenging than predicting diagnosed MCI. However, using transfer-learning methods, we achieved a test accuracy of 56.08%.</p><p><strong>Conclusion: </strong>Our models achieved state-of-the-art results in the MCI classification task, and demonstrated learning progress in predicting cognitive decline in the preclinical stage. As this is the first time DL models have been evaluated to classify healthy subjects based on cognitive scores, where brain changes are minimal and difficult to detect, this study opens new avenues for discovering biomarkers in early AD diagnosis and facilitating early interventions. Interpretation of the trained DL attention models provided valuable insights that aligned with the existing brain research, serving as a helpful tool for validating AI in healthcare applications.</p>","PeriodicalId":10578,"journal":{"name":"Computers in biology and medicine","volume":"204 ","pages":"111538"},"PeriodicalIF":6.3,"publicationDate":"2026-02-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"146156339","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
Hentriacontane alleviates streptozotocin-induced Alzheimer's disease-like conditions in rats: In silico and in vivo investigations revealed the unifying principles. 亨三康烷减轻大鼠链脲佐菌素诱导的阿尔茨海默病样疾病:计算机和体内研究揭示了统一的原则。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-02-09 DOI: 10.1016/j.compbiomed.2026.111513
Sagar A More, Awez Sikkalgar, Nayna Chourasiya, Yogeeta O Agrawal, Sameer N Goyal, Kartik T Nakhate, Mohd Usman Mohd Siddique, Sumit S Rathod

Intracerebroventricular (ICV) streptozotocin (STZ) deveops Alzheimer's disease (AD)-like conditions in rodents, which are characterized by insulin resistance, tau pathology, and neurodegeneration. Hentriacontane, a natural compound found in various sources, including beeswax, possesses anti-inflammatory and antioxidant properties. In the present investigation, we performed in silico molecular docking, molecular dynamics, MMGBSA, PCA, and FEL analysis of hentriacontane and rivastigmine with acetylcholinesterase (AchE). Further, we assessed the in vivo neuroprotective effects of hentriacontane in an ICV-STZ-induced AD-like condition in rats. STZ (3 mg/kg/ICV) was injected into male Sprague-Dawley rats. Cognitive functions were evaluated by Barnes-Maze (BM), novel object recognition test (NORT), and passive avoidance test (PAT). Hentriacontane (3 and 5 mg/kg) and rivastigmine (1 mg/kg) were given intraperitoneally for 14 days. Brain-derived neurotrophic factor (BDNF), AchE, oxidative stress parameters including GSH, MDA, SOD, and CAT, and proinflammatory cytokines including IL-6, TNF-α, IL-1β, and NF-ҡB were measured via ELISA. Further, we have also estimated the BACE1 and NO levels. Histopathological evaluation was conducted using hematoxylin and eosin staining. In silico molecular docking, dynamics, and post-dynamics data revealed promising binding affinities of hentriacontane for AchE. Further, hentriacontane attenuated ICV-STZ-induced cognitive deficit in BM, NORT, and PAT. Additionally, altered oxidative stress, proinflammatory, and cell signalling parameters were restored. Histopathology revealed that the hentriacontane-treated group showed significant restoration of the small pyramidal cells in the CA1 and CA2 regions of the brain. Hentriacontane demonstrated neuroprotective effects by modulation of AchE, leading to improved cognitive functions as evidenced by in silico and in vivo investigations.

脑室内(ICV)链脲佐菌素(STZ)在啮齿动物中发展为阿尔茨海默病(AD)样疾病,其特征是胰岛素抵抗、tau病理和神经变性。亨三康烷是一种天然化合物,存在于各种来源,包括蜂蜡中,具有抗炎和抗氧化特性。在本研究中,我们用乙酰胆碱酯酶(AchE)对hentriacontane和rivastigming进行了硅分子对接、分子动力学、MMGBSA、PCA和FEL分析。此外,我们评估了亨三康烷对icv - stz诱导的ad样大鼠的体内神经保护作用。雄性sd大鼠注射STZ (3 mg/kg/ICV)。采用Barnes-Maze (BM)、新目标识别测试(NORT)和被动回避测试(PAT)评估认知功能。Hentriacontane(3和5 mg/kg)和rivastigming (1 mg/kg)腹腔注射14 d。ELISA法检测脑源性神经营养因子(BDNF)、乙酰胆碱酯酶(AchE)、氧化应激参数GSH、MDA、SOD、CAT和促炎因子IL-6、TNF-α、IL-1β、NF-ҡB。此外,我们还估计了BACE1和NO水平。采用苏木精和伊红染色进行组织病理学评价。硅分子对接、动力学和后动力学数据显示,三康烷对乙酰胆碱具有良好的结合亲和力。此外,hentriacontane减轻了icv - stz诱导的BM, NORT和PAT的认知缺陷。此外,氧化应激、促炎和细胞信号参数的改变也得以恢复。组织病理学显示,hentriacontan处理组显示出大脑CA1和CA2区域的小锥体细胞的显著恢复。Hentriacontane通过调节AchE显示出神经保护作用,导致认知功能的改善,这在计算机和体内研究中得到了证明。
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引用次数: 0
Multi-structure CT radiomics-based consensus model for the diagnosis of pancreatic ductal adenocarcinoma and vascular involvement. 基于多结构CT放射组学的胰腺导管腺癌及血管累及诊断共识模型。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-02-09 DOI: 10.1016/j.compbiomed.2026.111542
Jia Peng, Shiyao Xie, Xinnan Liao, Mengnan Tai, Zixuan Nie, Yaoqi Wang, Zhiyuan Chen, Zheng Wang, Ya Peng

Background: Pancreatic ductal adenocarcinoma (PDAC) is a highly lethal malignancy, with accurate preoperative assessment of vascular involvement critical for determining resectability and treatment planning. Conventional contrast-enhanced CT relies on qualitative evaluations, leading to interobserver variability and diagnostic uncertainty. Existing radiomics studies for PDAC mostly focus on single anatomical structures and lack organ-level interpretability, limiting clinical translation.

Methods: A retrospective study was conducted using the international PANORAMA CT cohort, with 1488 eligible samples stratified into PDAC diagnosis (1186 cases) and vascular involvement prediction (302 cases) tasks. Standardized radiomic features were extracted from five key structures (artery, vein, pancreatic parenchyma, pancreatic duct, common bile duct) following IBSI guidelines. After LASSO-based dimensionality reduction, six machine learning classifiers were trained for each structure, with top-performing models integrated into structure-specific consensus models. A meta-level consensus model was constructed via stacking, and SHAP analysis was applied for organ-level interpretability. Model performance was evaluated using AUC, accuracy, calibration curves, and decision curve analysis (DCA).

Results: The multi-structure consensus model achieved an AUC of 0.975 (95% CI: 0.956-0.990) with 0.937 accuracy for PDAC diagnosis, and an AUC of 0.868 (95% CI: 0.769-0.952) with 0.803 accuracy for vascular involvement prediction in independent testing cohorts. DeLong tests demonstrated the model significantly outperformed four single-structure models (artery, vein, pancreatic duct, common bile duct) in both tasks (all P < 0.05), with no significant difference compared to the pancreas parenchyma model (PDAC diagnosis: P = 0.078; vascular involvement prediction: P = 0.093). SHAP analysis identified pancreatic parenchyma as the dominant contributor to PDAC diagnosis and arterial features as key for vascular involvement prediction. The model exhibited robust calibration (MAE = 0.01 for PDAC; MAE = 0.02 for vascular involvement) and clinical net benefit via DCA.

Conclusion: The proposed multi-structure CT radiomics consensus model integrates contextual information from multiple pancreatic structures, achieving competitive performance for PDAC diagnosis and vascular involvement prediction. Organ-level SHAP interpretation enhances clinical transparency, offering a reliable tool to support preoperative decision-making in PDAC.

背景:胰腺导管腺癌(Pancreatic ductal adencarcinoma, PDAC)是一种高致死率的恶性肿瘤,术前准确评估血管受累情况对确定可切除性和治疗计划至关重要。传统的对比增强CT依赖于定性评估,导致观察者之间的差异和诊断的不确定性。现有的放射组学研究主要集中在单个解剖结构上,缺乏器官水平的可解释性,限制了临床翻译。方法:采用国际PANORAMA CT队列进行回顾性研究,1488例符合条件的样本分为PDAC诊断(1186例)和血管受累预测(302例)任务。按照IBSI指南提取5个关键结构(动脉、静脉、胰腺实质、胰管、胆总管)的标准化放射学特征。在基于lasso的降维之后,为每个结构训练了六个机器学习分类器,其中表现最好的模型集成到特定于结构的共识模型中。通过堆叠构建了元水平共识模型,并采用SHAP分析对器官水平的可解释性进行分析。使用AUC、精度、校准曲线和决策曲线分析(DCA)评估模型性能。结果:多结构共识模型在PDAC诊断中的AUC为0.975 (95% CI: 0.956-0.990),准确率为0.937;在独立测试队列中,血管受损伤预测的AUC为0.868 (95% CI: 0.769-0.952),准确率为0.803。DeLong测试表明,该模型在两项任务中都明显优于四种单结构模型(动脉、静脉、胰管、胆总管)(均为P)。结论:所提出的多结构CT放射组学共识模型集成了来自多个胰腺结构的上下文信息,在PDAC诊断和血管受累预测方面具有竞争力。器官水平的SHAP解释提高了临床透明度,为支持PDAC的术前决策提供了可靠的工具。
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引用次数: 0
Corrigendum to "Indirect estimation of pediatric reference interval via density graph deep embedded clustering" [Comput. Biol. Med. 169 (2024) 107852]. “通过密度图深度嵌入聚类间接估计儿童参考区间”的更正[计算机]。医学杂志。医学,169(2024)107852]。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-02-08 DOI: 10.1016/j.compbiomed.2026.111544
Jianguo Zheng, Yongqiang Tang, Xiaoxia Peng, Jun Zhao, Rui Chen, Ruohua Yan, Yaguang Peng, Wensheng Zhang
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引用次数: 0
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