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Generative AI in medicine: A thorough examination of applications, challenges, and future perspectives 医学中的生成式人工智能:对应用、挑战和未来前景的全面考察。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-01-19 DOI: 10.1016/j.compbiomed.2026.111469
S. Jayasrilakshmi, Ansuman Mahapatra
Generative AI, an artificial intelligence, significantly transforms the healthcare sector. Recent breakthroughs in Generative AI include the use of language models and leveraging modern pre-trained Transformer models such as ChatGPT, Bard, LLaMA, DALL-E, and Bing. In medical applications, the advent of Large Language Models (LLMs) is a significant tool for predicting diseases, identifying risk factors, and enhancing diagnostic accuracy by analyzing a massive volume of unevenly distributed medical resources. This study provides a comprehensive review of existing literature on the use of LLMs in healthcare. It elucidates the ‘status quo’ of language models for general readers, healthcare professionals, and researchers. Specifically, this study investigates the capabilities of LLMs, including the transformation of healthcare consultation, enhancement of patient management and treatment, evolution of medical education, optimal resource utilization, and advancement of clinical research. The article organizes the literature based on human organs that will help readers quickly find relevant LLM applications for specific medical fields. The outcome of this survey will help medical professionals, researchers, and the healthcare industry understand the benefits, challenges, observed limitations, future challenges and applications of LLMs in healthcare.
生成式人工智能是一种人工智能,它极大地改变了医疗保健行业。生成式人工智能的最新突破包括使用语言模型和利用现代预训练的Transformer模型,如ChatGPT、Bard、LLaMA、dal - e和Bing。在医疗应用中,大型语言模型(llm)的出现是通过分析大量分布不均匀的医疗资源来预测疾病、识别风险因素和提高诊断准确性的重要工具。本研究提供了一个全面的文献综述现有的法学硕士在医疗保健的使用。它为普通读者、医疗保健专业人员和研究人员阐明了语言模型的“现状”。具体而言,本研究考察法学硕士的能力,包括医疗咨询的转变、患者管理和治疗的提高、医学教育的演变、资源的优化利用和临床研究的进步。文章以人体器官为基础组织文献,帮助读者快速找到特定医学领域的相关LLM应用。这项调查的结果将帮助医疗专业人员、研究人员和医疗保健行业了解法学硕士在医疗保健领域的优势、挑战、观察到的限制、未来的挑战和应用。
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引用次数: 0
Transformer-based feature extraction approach for hematopoietic cancer subtype classification 基于变压器特征提取的造血癌亚型分类方法。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-01-19 DOI: 10.1016/j.compbiomed.2026.111466
Kwang Ho Park , Younghee Lee , Wei Ding , Kwang Sun Ryu , Keun Ho Ryu
Accurate classification of hematopoietic cancer subtypes remains challenging due to the multipotent nature of hematopoietic cells and the absence of definitive genetic markers. To address this, we propose a Transformer-based Autoencoder that captures compact and biologically informative embeddings from gene expression data. Specifically, our method employs multi-head self-attention in the encoder to learn complex nonlinear interactions among genes, with a reconstruction decoder that enforces biological feature retention. We benchmarked our approach against four widely-used feature extraction methods—Principal Component Analysis, Non-negative Matrix Factorization, Autoencoder, and Variational Autoencoder—using transcriptomic data from five hematopoietic cancer subtypes in The Cancer Genome Atlas, totaling 2452 samples. Data were split 60:20:20 into training, validation, and test sets with stratification, and feature-extractor hyperparameters were chosen on the validation set. Each method produced 100-dimensional feature vectors, subsequently evaluated using eight multi-class classifiers: Light Gradient Boosting Machine, Extreme Gradient Boosting, Logistic Regression, Random Forest, Decision Tree, Support Vector Machine, and Neural Networks. On the independent test set, the Transformer-based Autoencoder embeddings combined with Light Gradient Boosting Machine achieved F1-score: 0.969, accuracy: 0.986, precision: 0.975, recall: 0.964, specificity: 0.996, G-mean: 0.980, and balanced accuracy: 0.954. For context, we additionally included a supervised tabular Transformer (FT-Transformer) as a reference; while strong, it is not directly comparable to our unsupervised feature extractor. To enhance interpretability and clinical relevance, we applied Shapley Additive exPlanations to identify the twenty most influential genes contributing to subtype discrimination. This analysis revealed key biomarkers related to endoplasmic reticulum function, antigen processing, and ribonucleic acid regulation. These findings demonstrate that transformer-based unsupervised feature extraction substantially improves predictive accuracy and yields valuable biological insights for complex hematologic malignancies. Overall, the study supports attention-driven representation learning for tabular biomedical data and motivates future work in generative/self-supervised representations for gene expression.
由于造血细胞的多能性和缺乏明确的遗传标记,对造血癌亚型的准确分类仍然具有挑战性。为了解决这个问题,我们提出了一个基于转换器的自编码器,它可以从基因表达数据中捕获紧凑的生物信息嵌入。具体来说,我们的方法在编码器中使用多头自注意来学习基因之间复杂的非线性相互作用,并使用重建解码器来强制保留生物特征。我们将我们的方法与四种广泛使用的特征提取方法——主成分分析、非负矩阵分解、自编码器和变分自编码器——进行基准测试,使用来自癌症基因组图谱中五种造血癌症亚型的转录组数据,共计2452个样本。数据以60:20:20的比例被分层分成训练集、验证集和测试集,并在验证集上选择特征提取器超参数。每种方法产生100维特征向量,随后使用8个多类分类器进行评估:光梯度增强机、极端梯度增强机、逻辑回归、随机森林、决策树、支持向量机和神经网络。在独立测试集上,基于变压器的自编码器嵌入组合光梯度增强机的f1得分为0.969,准确率为0.986,精密度为0.975,召回率为0.964,特异性为0.996,g均值为0.980,平衡准确率为0.954。出于上下文考虑,我们还包括了一个受监督的表格变压器(FT-Transformer)作为参考;虽然它很强大,但不能直接与我们的无监督特征提取器相比较。为了提高可解释性和临床相关性,我们应用Shapley加性解释来确定20个对亚型歧视最有影响的基因。该分析揭示了与内质网功能、抗原加工和核糖核酸调节相关的关键生物标志物。这些发现表明,基于变压器的无监督特征提取大大提高了预测准确性,并为复杂的血液恶性肿瘤提供了有价值的生物学见解。总的来说,该研究支持了表格生物医学数据的注意驱动表征学习,并激励了基因表达的生成/自我监督表征的未来工作。
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引用次数: 0
Helical static-mixer insert for pediatric and neonatal gas blending: RANS-CFD comparison of commercial and in-house monolithic designs 用于儿科和新生儿气体混合的螺旋静态混合器插入:商业和内部单片设计的ranss - cfd比较。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-01-19 DOI: 10.1016/j.compbiomed.2026.111475
Shirley Ferraz Crispilho , Paulo Cesar Duarte Junior , Martin Poulsen Kessler , Rudolf Huebner , Altibano Ortenzi
Accurate blending of oxygen and air in pediatric and neonatal respiratory support depends on compact connectors that promote efficient mixing without generating excessive pressure drop or dead volume. In current clinical practice, commercially available T-shaped connectors are often used as passive mixers, but their internal geometry was not originally optimized for this purpose. In this work, the original commercial connector (Geometry A), an in-house modified multi-part connector incorporating a static insert (Geometry B), and a new monolithic helical static-mixer insert (Geometry C) were evaluated under identical flow conditions. Three-dimensional Reynolds-averaged Navier–Stokes computational fluid dynamics simulations were performed to represent oxygen–nitrogen mixing in high-flow nasal cannula circuits, considering realistic flow rates and boundary conditions. For each geometry, mixture quality at the outlet was assessed from the spatial distribution of species mass fraction, hydraulic performance was quantified by the device pressure drop, and residence-time behavior for the helical insert was obtained from a transient scalar-pulse simulation. Geometry B improved outlet homogeneity relative to the commercial connector but required several assembled parts, which complicates handling and sterilization. Geometry C, designed as a monolithic helical static mixer, produced more uniform gas mixing than both previous configurations while maintaining pressure drops within ranges compatible with pediatric and neonatal use. These results indicate that the proposed helical insert has the potential to replace the current multi-part in-house adaptation and to offer a more effective alternative to standard commercial connectors when implemented as a monolithic medical-grade component.
儿科和新生儿呼吸支持中氧气和空气的准确混合取决于紧凑的连接器,该连接器可促进有效混合,而不会产生过大的压降或死体积。在目前的临床实践中,市售的t型连接器通常用作无源混合器,但其内部几何形状最初并未针对此目的进行优化。在这项工作中,在相同的流动条件下评估了原始的商业连接器(几何A)、内部改进的包含静态插入(几何B)的多部件连接器和新的单片螺旋静态混合器插入(几何C)。考虑实际流量和边界条件,采用三维reynolds -平均Navier-Stokes计算流体动力学模拟了高流量鼻插管循环中的氧氮混合。对于每种几何形状,通过物种质量分数的空间分布来评估出口的混合质量,通过装置压降来量化水力性能,并通过瞬态标量脉冲模拟获得螺旋插入的停留时间行为。相对于商业连接器,几何B改善了出口均匀性,但需要几个组装部件,这使得处理和灭菌变得复杂。Geometry C被设计为单片螺旋静态混合器,比之前的两种配置产生更均匀的气体混合,同时将压降保持在适合儿科和新生儿使用的范围内。这些结果表明,所提出的螺旋插入物有可能取代目前的多部分内部适配,并在作为单片医疗级组件实施时,为标准商用连接器提供更有效的替代方案。
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引用次数: 0
Multimodal diagnosis of Parkinson’s disease with an internet-based collaborative agent architecture of medical language models 基于互联网的医学语言模型协同代理体系结构的帕金森病多模态诊断。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-01-19 DOI: 10.1016/j.compbiomed.2026.111468
Eugenio Peixoto Junior , Felipe Cordeiro de Sousa , Junxin Chen , David Camacho , Stephen Rathinaraj Benjamin , Victor Hugo C. de Albuquerque
Parkinson’s disease (PD) remains one of the most prevalent neurodegenerative disorders, where delays in diagnosis compromise therapeutic outcomes and increase healthcare costs. Conventional unimodal approaches, based on voice, sensors, or imaging, face critical limitations, including small datasets, lack of reproducibility, and high infrastructure demands. To address these challenges, the proposed multimodal agent-based architecture integrates medical language models, audio signals, and neuroimaging, and is supported by data–machine learning pipelines and an edge–cloud infrastructure. The system leverages ensemble learning, large and vision language models, and Retrieval-Augmented Generation (RAG) to enhance clinical decision support. The transparency of the model was supported by explainability techniques (SHapley Additive exPlanations, permutation importance, partial dependence, and individual conditional expectation), which highlighted the main audio and sensor variables responsible for the predictions. Experimental evaluation confirmed the effectiveness of multimodal fusion. When integrated, the architecture achieved robust performance, with an accuracy of 0.86, an F1-score above 0.88, ROC-AUC greater than 0.93, and both sensitivity and specificity above 0.89. Calibration and hypothesis tests were validated by a low Brier score of 0.205 and an Expected Calibration Error of 0.151, while Decision Curve Analysis confirmed clinical relevance by minimizing false negatives, critical for early screening, and reducing redundant interventions. Multimodal fusion produced accurate, well-calibrated, and interpretable risk estimates for PD screening; larger prospective studies and cost-effectiveness analyses are needed to consolidate clinical applicability.
帕金森氏病(PD)仍然是最普遍的神经退行性疾病之一,其中诊断延误损害治疗结果并增加医疗保健费用。基于语音、传感器或成像的传统单模方法面临着严重的局限性,包括数据集小、缺乏可重复性和对基础设施的高要求。为了应对这些挑战,提出的基于多模态代理的架构集成了医学语言模型、音频信号和神经成像,并由数据机器学习管道和边缘云基础设施提供支持。该系统利用集成学习、大型和视觉语言模型以及检索增强生成(RAG)来增强临床决策支持。可解释性技术(SHapley Additive explanation,排列重要性,部分依赖性和个人条件期望)支持了模型的透明度,这些技术突出了负责预测的主要音频和传感器变量。实验评价证实了多模态融合的有效性。集成后,该体系结构具有良好的性能,准确率为0.86,f1评分在0.88以上,ROC-AUC大于0.93,灵敏度和特异性均在0.89以上。校准和假设检验的Brier评分为0.205,预期校准误差为0.151,而决策曲线分析通过最大限度地减少假阴性来证实临床相关性,这对早期筛查至关重要,并减少冗余干预。多模式融合为帕金森病筛查提供了准确、校准良好、可解释的风险评估;需要更大规模的前瞻性研究和成本效益分析来巩固临床适用性。
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引用次数: 0
Unveiling the renal therapeutic potential of Nypa fruticans leaves: An integrated experimental and in silico approach 揭示果叶的肾脏治疗潜力:一个综合的实验和计算机方法。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-01-19 DOI: 10.1016/j.compbiomed.2026.111482
Farhana Islam , Mostafa Kamal , Shoeb Ahmad , Masum Shahriar , Fariya Islam Rodru , Md. Nazmul Hasan , Md. Nazmul Hasan Zilani , Md. Ataur Rahman , Shahad Saif Khandker , Saquiba Yesmine
Chronic kidney disease (CKD) is a progressive, irreversible disorder associated with renal dysfunction, inflammation, and oxidative stress. Given the limitations of current therapies, this study assessed the renal curative effects of Nypa fruticans ethyl acetate leaf extract (EaNFL) in a gentamicin-induced nephrotoxicity rat model. GC‒MS and HPLC analyses identified 23 bioactive compounds in EaNFL, including rosmarinic acid, quercetin, and (−)-epicatechin, which were selected based on ADMET profiling, Lipinski's rule, and DFT analysis. These compounds were further investigated through computational studies against two renal targets: the AT1 receptor (PDB ID: 4YAY) and SGLT2 (PDB ID: 7VSI). Treatment with EaNFL, particularly at 400 mg/kg body weight and in combination therapy, significantly improved renal function and normalized biochemical and hematological parameters, likely due to its potent antioxidant and anti-inflammatory properties. Histopathological data supported these findings, showing reduced tubular necrosis, glomerular damage, and inflammation, especially in the high-dose groups. DFT analysis revealed that rosmarinic acid had the highest HOMO–LUMO energy gap (ΔE = 0.1314 eV), suggesting high chemical reactivity and potential biological compatibility. Molecular docking identified quercetin, rosmarinic acid, and (−)-epicatechin as the top binders, with rosmarinic acid showing the strongest affinity and forming a stable complex, as confirmed by 100 ns MDS. Taken together, the in vivo and in silico results indicate that EaNFL offers renoprotective benefits by targeting the RAAS and glucose transport pathways while also mitigating oxidative stress and inflammation. These findings demonstrate its therapeutic potential and warrant further investigation into its bioactive constituents and potential clinical use in renal treatment.
慢性肾脏疾病(CKD)是一种进行性、不可逆的疾病,与肾功能障碍、炎症和氧化应激有关。鉴于现有治疗方法的局限性,本研究在庆大霉素引起的肾毒性大鼠模型中评估了木果乙酸乙酯叶提取物(EaNFL)的肾脏疗效。GC-MS和HPLC分析鉴定了EaNFL中23个生物活性化合物,包括迷迭香酸、槲皮素和(-)-表儿茶素,这些化合物是根据ADMET谱图、Lipinski规则和DFT分析筛选出的。这些化合物通过对两个肾脏靶点的计算研究进一步研究:AT1受体(PDB ID: 4YAY)和SGLT2 (PDB ID: 7VSI)。EaNFL治疗,特别是在400 mg/kg体重和联合治疗中,显著改善肾功能和正常化生化和血液学参数,可能是由于其有效的抗氧化和抗炎特性。组织病理学数据支持这些发现,显示小管坏死、肾小球损伤和炎症减少,特别是在高剂量组。DFT分析显示迷迭香酸具有最高的HOMO-LUMO能隙(ΔE = 0.1314 eV),具有较高的化学反应活性和潜在的生物相容性。分子对接鉴定槲皮素、迷迭香酸和(-)-表儿茶素为顶部结合物,其中迷迭香酸亲和力最强,形成稳定的配合物,经100 ns MDS证实。综上所述,体内和硅实验结果表明,EaNFL通过靶向RAAS和葡萄糖运输途径提供肾保护作用,同时还能减轻氧化应激和炎症。这些发现证明了其治疗潜力,值得进一步研究其生物活性成分和潜在的临床应用于肾脏治疗。
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引用次数: 0
Multi-task non-contact ballistocardiogram-based vital signs monitoring in acupuncture 多任务非接触式心电图在针刺生命体征监测中的应用。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-01-17 DOI: 10.1016/j.compbiomed.2026.111461
Truong Tien Vo , Quy Phuong Le , Trong Nhan Nguyen , Jaeyeop Choi , Sudip Mondal , Byeongil Lee , Junghwan Oh
The study introduces an innovative approach for efficient vital signs monitoring in acupuncture by combining multi-channel ballistocardiogram (BCG) signals and multi-task learning, taking advantage of the polyvinylidene fluoride (PVDF) film sensor and deep neural networks. The proposed system utilizes non-contact under-mattress BCG signals and deep learning for heart rate (HR), respiration rate (RR) estimation and lying posture detection. A custom-designed data-logger captures the signal from a BCG sensor located under the patient’s back for data acquisition, and integrates Gated Recurrent Unit (GRU) and Multi-head Self-Attention (MHSA) deep learning mechanisms for efficient HR, RR estimation and posture classification. In experiments with 25 participants, the proposed method achieved 98.7% accuracy for activity recognition and 97.6% for lying posture classification. In HR and RR estimation, the best case of mean absolute error (MAE) for HR achieves 0.77 beats per minute (bpm) in the right lateral posture, while the best value of MAE for RR is 0.43 breaths per minute (brpm) in the seated posture, compared to an FDA-approved device. The results demonstrate the high performance of multi-task learning for vital signs estimation and posture classification with our BCG-based system. This work establishes an innovative and practical pathway for medical assistance tools in non-contact monitoring and management.
本研究提出了一种结合多通道BCG信号和多任务学习,利用聚偏氟乙烯(PVDF)薄膜传感器和深度神经网络的针刺生命体征高效监测创新方法。该系统利用非接触式床垫下BCG信号和深度学习进行心率(HR)、呼吸速率(RR)估计和躺姿检测。定制设计的数据记录仪从患者背部下方的BCG传感器捕获信号进行数据采集,并集成门控循环单元(GRU)和多头自注意(MHSA)深度学习机制,实现有效的HR、RR估计和姿势分类。在25人的实验中,该方法的活动识别准确率为98.7%,躺姿分类准确率为97.6%。在HR和RR估计中,与fda批准的设备相比,右侧卧位HR的最佳平均绝对误差(MAE)达到0.77次/分钟(bpm),而坐姿RR的最佳平均绝对误差(MAE)为0.43次/分钟(brpm)。结果表明,基于bcg的多任务学习系统在生命体征估计和姿势分类方面具有很高的性能。这项工作为医疗援助工具在非接触监测和管理方面开辟了一条创新和实用的途径。
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引用次数: 0
Machine learning guided structural dynamics identifies translation elongation factor 1 (EEF1A1) as an immunological biomarker and marine natural products as therapeutic leads for rheumatoid arthritis with major depressive disorder 机器学习引导结构动力学识别翻译延伸因子1 (EEF1A1)作为免疫生物标志物和海洋天然产物作为类风湿关节炎伴重度抑郁症的治疗线索
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-01-16 DOI: 10.1016/j.compbiomed.2026.111480
Santhiya Panchalingam , Govindaraju Kasivelu , Manikandan Jayaraman , Jeyakanthan Jeyaraman
Rheumatoid arthritis (RA) is a systemic autoimmune disease that predominantly affects synovial joints, especially those of the hands, elbows, wrists, knees, and shoulders. RA frequently co-occurs with major depressive disorder (MDD), amplifying disease burden and complicating clinical outcomes. This study employed a multi-step integrative bioinformatics and structural biology framework to identify candidate molecular biomarkers for RA and MDD. Differential gene expression analysis and weighted gene co-expression network analysis (WGCNA) were performed on the epitranscriptomic dataset. These analyses identified immune-regulatory gene modules that were significantly associated with both phenotypes. Least absolute shrinkage and selection operator (LASSO) regression was applied to select strong, statistically significant biomarkers. The methylated biomarker EEF1A1 was identified, and its structure predicted via AlphaFold, was subjected to in silico structure-based virtual screening (SBVS) against the Comprehensive Marine Natural Product Database (CMNPD). Four marine natural products (CMNPD17984, CMNPD27318, CMNPD26200, and CMNPD26011) showed significant binding affinity for EEF1A1. Furthermore, EEF1A1-MNP complexes were simulated for 150 ns using GROMACS, and PCA-based free energy landscape (FEL) analyses were performed to characterize the dynamic behavior and identify energy minima. This integrated computational approach provides a comprehensive platform for biomarker discovery and validation in RA and MDD, with potential applications in early diagnosis, therapeutic targeting, and precision medicine.
类风湿性关节炎(RA)是一种系统性自身免疫性疾病,主要影响滑膜关节,特别是手、肘关节、手腕、膝盖和肩膀。RA经常与重度抑郁症(MDD)共同发生,加重了疾病负担并使临床结果复杂化。本研究采用多步骤综合生物信息学和结构生物学框架来确定RA和MDD的候选分子生物标志物。对表转录组数据集进行差异基因表达分析和加权基因共表达网络分析(WGCNA)。这些分析确定了与两种表型显著相关的免疫调节基因模块。最小绝对收缩和选择算子(LASSO)回归应用于选择强的,具有统计学意义的生物标志物。鉴定了甲基化的生物标志物EEF1A1,并通过AlphaFold预测了其结构,并针对综合海洋天然产品数据库(CMNPD)进行了基于硅结构的虚拟筛选(SBVS)。四种海洋天然产物(CMNPD17984、CMNPD27318、CMNPD26200和CMNPD26011)对EEF1A1具有显著的结合亲和力。此外,利用GROMACS对EEF1A1-MNP配合物进行了150 ns的模拟,并进行了基于pca的自由能景观(FEL)分析,以表征其动态行为并识别能量最小值。这种综合计算方法为RA和MDD的生物标志物发现和验证提供了全面的平台,在早期诊断、治疗靶向和精准医学方面具有潜在的应用前景。
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引用次数: 0
IntNet: Lightweight yet high-performance deep learning system for intuitive radar patterns analysis and human fall detection internet:轻量级但高性能的深度学习系统,用于直观的雷达模式分析和人体跌倒检测
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-01-16 DOI: 10.1016/j.compbiomed.2026.111485
Malek Y. Almallah , Belal H. Sababha
The growing trend of solitary living among the elderly and young, coupled with the high risk of falls leading to injuries and death, highlights the need for fall monitoring systems. Emphasizing individuals' privacy and comfort, these systems should rely on radar sensors instead of visual-based, acoustic-based, or wearable solutions. Current radar-based systems have yet to reach satisfactory real-world performance. This work proposes a radar-based fall detection system that offers superior performance in complex real-world scenarios while maintaining edge computing capabilities and utilizing minimal hardware resources. The proposed deep learning system achieved a recall of 98.99 % and a precision of 99.32 %. These unprecedented performance numbers are measured on the proposed dataset, which is the most real-life representative dataset in the literature. The system has 211.8k parameters and ∼8.84 M Floating Point Operations (FLOPs), achieving an edge computing capability. Moreover, the efficient model construction eliminates redundant computation in real-time operation. Furthermore, this work proposes a novel performance comparison methodology that can be used in all classification problems. This methodology compares performance metrics, which are calculated based on different datasets, with a high level of fairness.
老年人和年轻人独居的趋势日益增加,再加上跌倒导致受伤和死亡的高风险,凸显了对跌倒监测系统的需求。这些系统强调个人隐私和舒适,应该依靠雷达传感器,而不是基于视觉、声学或可穿戴的解决方案。目前基于雷达的系统尚未达到令人满意的实际性能。这项工作提出了一种基于雷达的跌倒检测系统,该系统在复杂的现实场景中提供卓越的性能,同时保持边缘计算能力并利用最少的硬件资源。所提出的深度学习系统达到了98.99%的召回率和99.32%的准确率。这些前所未有的性能数字是在提议的数据集上测量的,这是文献中最具现实代表性的数据集。该系统具有211.8k个参数和~ 8.84 M浮点运算(FLOPs),实现了边缘计算能力。此外,高效的模型构建消除了实时操作中的冗余计算。此外,这项工作提出了一种新的性能比较方法,可用于所有分类问题。这种方法比较了基于不同数据集计算的性能指标,具有高度的公平性。
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引用次数: 0
Amplitude symbolic analysis: a tool for the evaluation of the autonomic function complementary to traditional symbolic approach 振幅符号分析:一种与传统符号方法互补的评价自主神经功能的工具
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-01-16 DOI: 10.1016/j.compbiomed.2026.111473
Alberto Porta , Beatrice Cairo , Vlasta Bari , Chiara Arduino , Ilaria Burzo , Beatrice De Maria , Paolo Castiglioni , Luc Quintin , Aparecida Maria Catai , Franca Barbic , Raffaello Furlan
Symbolic analysis (SA) infers cardiac control from spontaneous stationary sequences of heart period (HP) by estimating the probability of symbolic pattern classes. Unfortunately, SA does not assess the fraction of HP variability associated with symbolic pattern families. This study proposes amplitude SA (ASA) accounting for absolute changes between consecutive HPs. ASA leverages uniform 6-bin quantization to symbolize HP, the delay embedding procedure to form length-3 symbolic patterns and a traditional strategy to group symbolic patterns into four classes families according to number and sign of variations between adjacent symbols. ASA computes the fraction of variance associated with symbolic pattern classes. ASA was applied to HP variability derived from: 1) healthy subjects during pharmacological challenges (n = 9; age: 25–46 yrs, 9 males); 2) healthy subjects during graded postural stimuli (n = 19; age: 21–48 yrs, 8 males); 3) Parkinson disease (PD) patients (n = 12; age: 55–79 yrs, 8 males) and matched healthy controls (n = 12; age: 58–72 yrs, 7 males). We computed both global and local ASA markers and we compared them with SA indexes. Over stationary HP series we found that: i) ASA provides a general method to decompose HP variance according to symbolic pattern classes; ii) ASA is useful to describe cardiac control; iii) ASA indexes are complementary to SA markers; iv) ASA emphasizes the link of HP variability markers expressed in absolute units with vagal control; v) global and local ASA approaches provide similar information. SA and ASA should be utilized concomitantly for a deeper characterization of cardiac control from spontaneous HP fluctuations.
符号分析(symbol analysis, SA)通过估计符号模式类的概率,从自发平稳的心期序列(HP)中推断出心脏控制。不幸的是,SA并没有评估与符号模式家族相关的HP变异的比例。本研究提出用振幅SA (ASA)来计算连续hp之间的绝对变化。ASA利用均匀6 bin量化对HP进行符号化,利用延迟嵌入程序形成长度为3的符号模式,利用传统策略根据相邻符号之间的变化数和符号将符号模式分为四类族。ASA计算与符号模式类相关的方差的分数。ASA应用于HP变异性的来源:1)健康受试者在药理学挑战期间(n = 9,年龄:25-46岁,9名男性);2)健康受试者接受分级体位刺激(n = 19,年龄21 ~ 48岁,男性8例);3)帕金森病(PD)患者(n = 12,年龄55-79岁,男性8人)和匹配的健康对照(n = 12,年龄58-72岁,男性7人)。我们计算了全局和局部ASA标记,并将它们与SA指数进行了比较。对于平稳HP序列,我们发现:i) ASA提供了一种按照符号模式类分解HP方差的通用方法;ii) ASA可用于描述心脏控制;iii) ASA指数与SA标记物是互补的;iv) ASA强调以绝对单位表达的HP变异性标记与迷走神经控制的联系;v)全球和本地ASA方法提供类似的信息。SA和ASA应同时使用,以更深入地表征自发HP波动引起的心脏控制。
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引用次数: 0
Unravelling the structural impact of progesterone receptor mutations in myoma and progesterone intolerance through computational modeling 通过计算模型揭示肌瘤和黄体酮不耐受中黄体酮受体突变的结构影响
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-01-15 DOI: 10.1016/j.compbiomed.2026.111476
F. Saritha , R. Aswath Kumar , K.V. Dileep
Progesterone (P4) is a steroid hormone involved in the regulation of female reproductive functions. The endogenous progesterone receptor (PR), a member of the nuclear receptor family of ligand-dependent transcription regulators responsible for P4 action in the body through the ‘ligand binding domain’ (LBD). PR isoforms, PR-A and PR-B, are encoded by a single gene, PGR and variations in this gene can disrupt cellular signaling. In the current study, putative disease-causing mutations on PR has been identified through computationally and its mechanistic effects were explored using structural bioinformatics tools. Studies suggested that 11 of 66 missense variants (within the LBD) induce structural destabilization and were identified as potentially deleterious. Our ensemble docking suggested that these variations have a limited impact on P4 binding, however they significantly disrupt the binding of co-activators as evident by the protein-peptide docking. The binding of co-activators to the PR is the determining factor for the P4 signaling. Finally, based on the free energy of binding, we proposed two variations such as R869H and C798Y could cause myoma and progesterone tolerance conditions respectively. These findings were further validated through the use of allostery predictions. Our results reveal distinct mechanisms by which PR mutations modulate receptor function, laying the framework for future mechanistic studies and therapeutic development for PR-associated reproductive disorders.
黄体酮(P4)是一种类固醇激素,参与调节女性生殖功能。内源性孕激素受体(PR)是核受体家族的一员,是配体依赖性转录调节因子,通过“配体结合域”(LBD)在体内负责P4的作用。PR亚型PR- a和PR- b由单个基因PGR编码,该基因的变异可以破坏细胞信号传导。在目前的研究中,通过计算确定了PR上可能的致病突变,并利用结构生物信息学工具探索了其机制作用。研究表明,66个错义变异中有11个(在LBD内)诱导结构不稳定,并被确定为潜在的有害变异。我们的集合对接表明,这些变异对P4结合的影响有限,但它们显著破坏了共激活物的结合,这一点从蛋白-肽对接中可以看出。共激活剂与PR的结合是P4信号转导的决定因素。最后,基于结合自由能,我们提出了R869H和C798Y两种变异分别可引起肌瘤和黄体酮耐受条件。这些发现通过使用变构预测得到进一步验证。我们的研究结果揭示了PR突变调节受体功能的独特机制,为PR相关生殖疾病的未来机制研究和治疗开发奠定了框架。
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Computers in biology and medicine
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