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A genetically optimized physics-informed neural network for multiphysics modeling of magnetic hyperthermia in brain cancer. 一种遗传优化的物理信息神经网络,用于脑癌磁热疗的多物理场建模。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-04-15 Epub Date: 2026-03-17 DOI: 10.1016/j.compbiomed.2026.111621
Behnam Zeinali, Afsaneh Mojra, Kambiz Vafai

Magnetic hyperthermia therapy (MHT) in glioblastoma requires accurate modeling of nanoparticle transport and heat deposition across highly heterogeneous tumor regions. Traditional numerical approaches remain limited by high computational cost and sensitivity to complex tumor geometry, reducing their suitability for rapid clinical evaluation. To address these challenges, we introduce a genetically optimized physics-informed neural network (GA-PINN) that directly solves the bioheat transfer equation, while its governing parameters are dynamically coupled to nanoparticle transport, Darcy flow, and Arrhenius damage kinetics. Unlike prior PINN implementations, our approach integrates automatic genetic tuning of learning rates and loss-term weights, ensuring balanced convergence across coupled physics. Furthermore, tumor-focused collocation sampling uniquely enhances resolution of steep gradients near injection sites, a critical feature for patient-specific modeling. Results show that single-port injection restricts heating to the necrotic core, yielding central temperatures of 40 °C, 42.5 °C, and 48 °C for nanoparticle doses of 2.5, 5, and 10 kg/m3, respectively, but produces <10% necrosis in the viable rim. Increasing the magnetic field amplitude-frequency product to 8.4 × 108 A/(m.s) raises peak temperatures to ∼47 °C and significantly accelerates damage accumulation. A multi-port injection strategy improves peripheral nanoparticle coverage, elevates rim temperatures to ∼41.5 °C, and reduces the dispersion index by more than 30%, indicating markedly more uniform ablation. These findings demonstrate that GA-PINN provides a stable, efficient, and physics-consistent surrogate for MHT, enabling rapid assessment and optimization of dosing conditions, magnetic field parameters, and multi-site injection strategies for patient-specific treatment planning.

磁热疗法(MHT)在胶质母细胞瘤中需要精确模拟纳米颗粒在高度异质性肿瘤区域的运输和热沉积。传统的数值方法仍然受到计算成本高和对复杂肿瘤几何形状的敏感性的限制,降低了它们对快速临床评估的适用性。为了应对这些挑战,我们引入了一种遗传优化的物理信息神经网络(GA-PINN),该网络直接求解生物传热方程,而其控制参数与纳米颗粒传输、达西流和阿伦尼乌斯损伤动力学动态耦合。与之前的PINN实现不同,我们的方法集成了学习率和损失项权重的自动遗传调谐,确保了耦合物理间的平衡收敛。此外,以肿瘤为中心的配位采样独特地提高了注射部位附近陡峭梯度的分辨率,这是患者特异性建模的关键特征。结果表明,单孔注射限制了对坏死核心的加热,纳米颗粒剂量分别为2.5、5和10 kg/m3时,中心温度分别为40°C、42.5°C和48°C,但产生8 A/(m)。s)将峰值温度提高到~ 47°C,并显著加速损伤积累。多端口注入策略提高了周围纳米颗粒的覆盖率,将边缘温度提高到~ 41.5°C,并将分散指数降低了30%以上,表明明显更均匀的烧蚀。这些发现表明,GA-PINN为MHT提供了一种稳定、高效、物理一致的替代品,能够快速评估和优化给药条件、磁场参数和多位点注射策略,从而制定针对患者的治疗计划。
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引用次数: 0
Jigsaws soup: Improved laparoscopic surgical gesture classification, and skill level evaluation using model souping. 拼图汤:改进腹腔镜手术手势分类,并使用模型汤评估技能水平。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-04-15 Epub Date: 2026-03-16 DOI: 10.1016/j.compbiomed.2026.111617
Kade MacWilliams, Ahmed Nasr, Georges Azzie, James R Green, Carlos Rossa

Laparoscopy has revolutionised surgery, with faster recovery and less trauma for patients. However, extensive training is needed to gain the required skills, with said training ideally involving simulation-based strategies. A shortage of human expert coaches results in a lack of training opportunities in many jurisdictions. An Artificial Intelligence (AI) coach that can replicate the feedback from a human expert can be utilised to make quality surgical training more accessible. To be effective, this AI coach must classify complex movements into meaningful surgical gestures and then assess the trainee's performance on several parameters. We apply model soup, a recently developed machine learning approach, to improve gesture recognition and surgical score regression from kinematic simulator data. We also apply model soup to improve surgical gesture recognition from video data. By mixing several different 'ingredient' models into a final 'soup' model, performance is increased by 2.84-7.25 percentage points across three surgical tasks over state-of-the-art methods. These improved accuracies bring us closer to a fully autonomous laparoscopic surgery coach, with the potential to dramatically increase the availability of quality training, especially in environments where the availability of teachers and coaches is insufficient.

腹腔镜手术彻底改变了外科手术,使患者恢复更快,创伤更少。然而,需要广泛的训练来获得所需的技能,理想的训练包括基于模拟的策略。专家教练的短缺导致许多司法管辖区缺乏培训机会。人工智能(AI)教练可以复制人类专家的反馈,从而使高质量的外科训练更容易获得。为了提高效率,这个人工智能教练必须将复杂的动作分类为有意义的手术手势,然后根据几个参数评估受训者的表现。我们应用模型汤,一种最近开发的机器学习方法,来改进动作模拟器数据的手势识别和手术评分回归。我们还应用模型汤来提高手术手势识别的视频数据。通过将几种不同的“成分”模型混合成最终的“汤”模型,在三个手术任务中,性能比最先进的方法提高了2.84-7.25个百分点。这些提高的准确性使我们离完全自主的腹腔镜手术教练更近了一步,有可能大大增加高质量培训的可用性,特别是在教师和教练不足的环境中。
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引用次数: 0
Optimized Complex-Valued Spatio-Temporal Graph Convolutional Networks for attention deficit hyperactivity disorder detection in pediatric EEG signals. 优化复值时空图卷积网络检测儿童脑电图信号中的注意缺陷多动障碍。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-03-24 DOI: 10.1016/j.compbiomed.2026.111625
R Lakshmi, Vanathi Balasubramanian

Attention Deficit Hyperactivity Disorder (ADHD) is a neurodevelopmental condition affecting mood, anxiety, learning, and sleep. Electroencephalogram (EEG) signals assist diagnosis, but challenges include complexity, nonlinearity, non-stationarity, overlapping patterns, and limited feature interpretability. To address these issues, Optimized Complex-Valued Spatio-Temporal Graph Convolutional Networks for ADHD Detection in Pediatric EEG Signals (c) is proposed. Input signals are collected from an EEG dataset for ADHD and an EEG dataset of children with Learning Disabilities (LD). Preprocessing is performed using a Multi-Window Savitzky-Golay Filter (MWSGF) to remove noise and artifacts, followed by the Synchro Transient Extracting Transform (STET) for extracting EEG channel features. These features are input into a Complex-Valued Spatio-Temporal Graph Convolutional Network (CSTGCN), classifying signals into ADHD or No-ADHD, and LD or No-LD. Red-Billed Blue Magpie Optimization Algorithm (RBBMO) is employed to optimize the network weights. Implemented in Python, the proposed CSTGCN-ADHD-EEG framework achieves 99.46% accuracy and 98.32% precision, outperforming existing models.

注意缺陷多动障碍(ADHD)是一种影响情绪、焦虑、学习和睡眠的神经发育疾病。脑电图(EEG)信号有助于诊断,但挑战包括复杂性、非线性、非平稳性、重叠模式和有限的特征可解释性。为了解决这些问题,优化复值时空图卷积网络用于儿童脑电图信号的ADHD检测(c)。输入信号分别来自ADHD和LD儿童的EEG数据集。使用多窗口Savitzky-Golay滤波器(MWSGF)进行预处理以去除噪声和伪像,然后使用同步瞬态提取变换(STET)提取EEG通道特征。将这些特征输入到复值时空图卷积网络(CSTGCN)中,将信号分类为ADHD或No-ADHD, LD或No-LD。采用红嘴蓝喜鹊优化算法(RBBMO)对网络权值进行优化。本文提出的CSTGCN-ADHD-EEG框架在Python上实现,准确率达到99.46%,精度达到98.32%,优于现有模型。
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引用次数: 0
In silico analysis of the haemodynamic disturbances caused by the subaortic membrane pathology. 由主动脉下膜病理引起的血流动力学紊乱的计算机分析。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-03-23 DOI: 10.1016/j.compbiomed.2026.111645
Alessandra Monteleone, Gaetano Burriesci

Subaortic stenosis, a heart disease characterised by a narrowing of the left ventricular outflow tract, is frequently caused by the presence of a subaortic membrane (SAM) located at the aortic valve inlet. This anatomical obstruction leads to significant haemodynamic alterations and leaflets fluttering, whose mechanisms are not yet fully understood. This research investigates, through computer simulations, the SAM's haemodynamic impact and the mechanism behind leaflets fluttering. A mono-physics fluid-structure interaction approach, based on the meshless smoothed particle hydrodynamics method, was employed. This approach represents both blood and structures with particles without defining interfaces, efficiently capturing large deformations and dynamic phenomena. Two common types of SAMs were investigated - a discrete thin SAM layer (flexible) and a thick fibromuscular ridge SAM (stiff) - and compared with a healthy aortic valve. Projected dynamic valve area (PDVA) was used as a reference parameter to quantify leaflet oscillation. While the PDVA in the healthy aortic valve stabilised at 283 mm2 without oscillation, both pathological cases exhibited self-sustained periodic fluctuations. In the presence of discrete thin SAM layer, the mean PDVA decreased by 3% compared to the healthy control. This reduction was more pronounced for thick fibromuscular ridge configurations, where the mean PDVA was 9% lower than the healthy case. Notably, stiffer SAM configurations more than doubled the oscillation amplitude (from 3.12 mm2 to 6.77 mm2) and increased the oscillation frequency by 8% relative to flexible membranes. Vortices dynamics was analysed, determining the phases of their formation, growth and migration. Through the analysis of velocity, vorticity, and shear stress maps, this study provides critical insights into the origin of fluttering and its influence over these key haemodynamic parameters. Findings demonstrate that the oscillatory leaflet motion is the result of vortices formation and shedding. The stiffness of the SAM significantly modulates the fluttering behaviour. While structural damage and haematological complications were not directly simulated, the identified oscillations represent haemodynamic conditions associated in literature with such pathologies. The observed alterations in wall shear stress magnitude and direction provide a physical basis for the mechanical environment that could contribute to endothelial cell dysfunction in the presence of SAM.

主动脉下狭窄是一种以左心室流出道狭窄为特征的心脏病,通常是由主动脉瓣入口处存在主动脉下膜(SAM)引起的。这种解剖阻塞导致显著的血流动力学改变和小叶飘动,其机制尚不完全清楚。本研究通过计算机模拟研究了SAM的血流动力学影响和小叶飘动背后的机制。采用基于无网格光滑粒子流体力学方法的单物理流固耦合方法。这种方法既可以表示血液,也可以表示带有颗粒的结构,而不需要定义界面,有效地捕获大变形和动态现象。研究了两种常见的SAM类型——离散的薄SAM层(柔性)和厚的纤维肌肉嵴SAM(刚性)——并与健康的主动脉瓣进行了比较。以投影动态阀面积(PDVA)为参考参数量化叶片振荡。健康主动脉瓣内PDVA稳定在283 mm2,无振荡,而两例病理病例均表现出自我持续的周期性波动。在离散的薄SAM层的存在下,平均PDVA比健康对照降低了3%。这种减少在纤维肌肉脊结构中更为明显,其平均PDVA比健康病例低9%。值得注意的是,相对于柔性膜,更硬的SAM结构使振荡幅度增加了一倍以上(从3.12 mm2增加到6.77 mm2),振荡频率增加了8%。对涡旋动力学进行了分析,确定了涡旋形成、生长和迁移的阶段。通过对速度、涡度和剪应力图的分析,本研究为颤振的起源及其对这些关键血流动力学参数的影响提供了重要的见解。研究结果表明,振荡的小叶运动是涡旋形成和脱落的结果。SAM的刚度显著调节了颤振行为。虽然没有直接模拟结构损伤和血液学并发症,但确定的振荡代表了与此类病理相关的文献中的血流动力学条件。观察到的壁剪切应力大小和方向的变化为在SAM存在下可能导致内皮细胞功能障碍的机械环境提供了物理基础。
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引用次数: 0
Fractional-order safe mental-health corridor modelling with Matignon spectral analysis of post-pandemic fatigue-to-recovery dynamics. 分数阶安全心理健康走廊模型与流行病后疲劳到恢复动态的马蒂尼翁谱分析。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-03-21 DOI: 10.1016/j.compbiomed.2026.111629
G M Vijayalakshmi, Shewafera Wondimagegnhu Teklu
<p><p>Mental health disorders, particularly anxiety, fatigue, and depression, exhibit complex dynamical features including delayed onset, memory-dependent progression, cyclical relapse patterns, and heterogeneous population outcomes that transcend conventional integer-order modeling frameworks. This study develops a novel fractional-order HAFCU model partitioning the population into five interacting compartments: Healthy (H), Anxious (A), Fatigued (F), Critical (C), and Under Recovery (U), incorporating an explicit relapse pathway from recovery back to anxiety to represent the recurrent nature of psychological disorders observed clinically. Employing the Atangana-Baleanu fractional derivative in the Caputo sense with its non-singular Mittag-Leffler kernel, the model uniquely captures fading memory effects wherein past traumatic experiences and cumulative stress continuously influence current psychological transitions- a phenomenon well-documented in psychiatric epidemiology but previously unaddressed in compartmental frameworks. The basic reproduction number, derived via the NGM approach as R<sub>0</sub>=max{θ<sub>1</sub>H<sup>∗</sup>κ<sub>1</sub>+μ<sub>1</sub>,θ<sub>2</sub>H<sup>∗</sup>κ<sub>2</sub>+μ<sub>2</sub>} with computed value R<sub>0</sub>=0.625, establishes the threshold below which psychological distress naturally attenuates without sustained intervention. Rigorous mathematical analysis proves existence, uniqueness, positivity, boundedness, and both local and global stability via Lyapunov method, while a novel Matignon spectral stability theorem adapted for ABC-kernel systems provides eigenvalue-based criteria for local asymptotic stability under memory-driven dynamics. Key innovations include: (i) the first mathematically defined safe mental-health corridor- a positively invariant region where clinical depression and combined psychological load remain below empirically motivated thresholds informed by WHO global estimates; (ii) a predictor-corrector numerical scheme specifically tailored to the ABC kernel with proven convergence of order 1+υ; and (iii) the introduction of the Lorenz curve and Gini coefficient (G=0.287) as quantitative metrics for inequality in psychological burden distribution across compartments- a methodological breakthrough enabling empirical assessment of mental health disparities. Numerical simulations reveal convergence to equilibrium at t=100 days with compartmental distribution H=0.1517, A=0.0947, F=0.1466, C=0.1566, and U=0.4504, confirming that memory effects delay transitions and smooth trajectories while preserving global stability. Sensitivity analysis identifies anxiety induction (θ<sub>1</sub>) and fatigue induction (θ<sub>2</sub>) as the most influential parameters for distress propagation (sensitivity indices +1.000), and optimal control characterization provides explicit expressions for relapse prevention (u<sub>1</sub><sup>∗</sup>) and recovery enhancement (u<sub>2</sub><sup>∗</sup>) strategies. Val
精神健康障碍,特别是焦虑、疲劳和抑郁,表现出复杂的动态特征,包括延迟发作、记忆依赖进展、周期性复发模式和超越传统整阶模型框架的异质性人群结果。本研究开发了一种新的分数阶HAFCU模型,将人群划分为五个相互作用的区域:健康(H)、焦虑(a)、疲劳(F)、危急(C)和恢复不足(U),结合了从恢复到焦虑的明确复发途径,以代表临床观察到的心理障碍的复发性。该模型采用了Caputo意义上的Atangana-Baleanu分数导数及其非奇异的Mittag-Leffler内核,独特地捕捉了记忆衰退效应,其中过去的创伤经历和累积的压力持续影响当前的心理转变——这一现象在精神病学流行病学中得到了充分的记录,但在之前的区域框架中没有得到解决。通过NGM方法导出的基本繁殖数为R0=max{θ1H∗κ1+μ1,θ2H∗κ2+μ2},计算值R0=0.625,建立了心理困扰在不持续干预的情况下自然减弱的阈值。通过严谨的数学分析,通过Lyapunov方法证明了系统的存在性、唯一性、正性、有界性以及局部稳定性和全局稳定性,同时提出了一种新的适用于abc -核系统的matgnon谱稳定性定理,为记忆驱动下系统的局部渐近稳定性提供了基于特征值的判据。主要创新包括:(i)第一个用数学方法定义的安全心理健康走廊——一个积极不变的区域,在该区域,临床抑郁和综合心理负荷仍低于世卫组织全球估计数所提供的经验动机阈值;(ii)一个专门针对ABC核的预测校正数值方案,证明其收敛性为1+υ阶;(iii)引入洛伦兹曲线和基尼系数(G=0.287)作为心理负担分布不平等的定量指标,这是一项方法上的突破,能够对心理健康差异进行实证评估。数值模拟表明,在t=100天趋同于平衡状态,间隔分布H=0.1517, A=0.0947, F=0.1466, C=0.1566, U=0.4504,证实了记忆效应在保持全局稳定性的同时延迟了过渡和平滑轨迹。敏感性分析确定焦虑诱导(θ1)和疲劳诱导(θ2)是影响痛苦传播的最重要参数(敏感性指数+1.000),最优控制表征为复发预防(u1∗)和恢复增强(u2∗)策略提供了明确的表达。根据世卫组织(2022年)记录全球焦虑和抑郁增加25%的大流行后心理健康统计数据,该模型成功再现了三种基本经验模式:(i)危机期间心理困扰的急剧上升,(ii)超过100周的延迟恢复轨迹,以及(iii)洛伦兹曲线差异所反映的异质性结果。这一综合框架在精神病学流行病学中推进了分数微积分理论,同时为不同人群的心理健康政策、干预时机和资源分配提供了数学基础的决策支持工具。
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引用次数: 0
Transfer learning is the electrocardiogram reconstruction capstone. 迁移学习是心电图重建的顶点。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-03-21 DOI: 10.1016/j.compbiomed.2026.111644
Ekenedirichukwu N Obianom, Abdulmalik Koya, Fan Feng, G André Ng, Xin Li

Electrocardiogram (ECG) reconstruction from reduced-lead configurations is essential for improving patient comfort and enabling wearable cardiac monitoring. Traditional reconstruction models (whether generic, population-specific, or patient-specific) require large datasets and extensive computational resources, limiting their practicality in real-world applications. This study investigates transfer learning as a strategy to overcome these limitations by enabling efficient personalisation of generic ECG reconstruction models. Three pipelines were evaluated: a linear regression model using leads I, II, V2, a wave-masked linear regression model using leads I, II, V3 (WMLR), and an ensemble of feed-forward neural networks. Generic models were trained on 10,000 normal ECG records from the CODE-15% dataset and fine-tuned using patient-specific data from the PTB-XL dataset. Performance was assessed using multiple metrics, including Pearson correlation, Dynamic Time Warping, Percentage Root-mean-square Difference, morphology similarity, and spectral similarity, across time intervals up to two years post-personalisation. Results show that transfer learning significantly improves reconstruction accuracy compared to generic models, with personalised models maintaining stable performance over extended periods. WMLR consistently outperformed other pipelines in correlation and morphological fidelity, demonstrating the continued relevance of linear approaches for resource-efficient deployment. While performance declined in cases where ECG morphology changed over time (like from normal to infarction), accuracy remained statistically acceptable, highlighting the robustness of transfer learning-based personalisation. These findings highlight the potential of transfer learning to enable scalable, long-term ECG monitoring systems that combine accuracy, adaptability, and computational efficiency.

减少导联配置的心电图(ECG)重建对于改善患者舒适度和实现可穿戴心脏监测至关重要。传统的重建模型(无论是通用的、特定人群的还是特定患者的)需要大量的数据集和大量的计算资源,这限制了它们在现实世界应用中的实用性。本研究探讨了迁移学习作为一种策略,通过实现通用心电图重建模型的有效个性化来克服这些限制。评估了三种管道:使用引线I, II, V2的线性回归模型,使用引线I, II, V3 (WMLR)的波掩线性回归模型,以及前馈神经网络的集合。通用模型在来自CODE-15%数据集的10,000条正常心电图记录上进行训练,并使用来自PTB-XL数据集的患者特定数据进行微调。使用多种指标评估性能,包括Pearson相关性、动态时间翘曲、百分比均方根差、形态相似性和光谱相似性,在个性化后的两年时间间隔内进行评估。结果表明,与通用模型相比,迁移学习显著提高了重建精度,个性化模型在较长时间内保持稳定的性能。WMLR在相关性和形态保真度方面始终优于其他管道,证明了线性方法与资源高效部署的持续相关性。虽然在心电图形态随时间变化(如从正常到梗塞)的情况下,性能下降,但准确性在统计上仍然可以接受,突出了基于迁移学习的个性化的鲁棒性。这些发现突出了迁移学习的潜力,可以实现可扩展的、长期的心电监测系统,该系统结合了准确性、适应性和计算效率。
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引用次数: 0
Machine learning-augmented finite element modeling for transient hemodynamics in human arteries. 人类动脉瞬态血流动力学的机器学习增强有限元建模。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-03-20 DOI: 10.1016/j.compbiomed.2026.111623
Muhammad Sheeraz Junaid, Muhammad Nauman Aslam, Shajar Abbas, Assmaa Abd-Elmonem, Mawadda E E Abulhassan, Firdavs Kuchkarov, Ibrahim Mahariq

This work introduces a machine learning enhanced finite element model for the study of blood flow in a stretching artery with the presence of sulfonated polystyrene nanoparticles (NSPS). The analysis deals with the coupling of the blood dynamics with nanoscale additives, which show significant promise for biomedical applications, such as drug delivery, oncological therapy, and targeted treatment based on magnetohydrodynamic mechanisms. The influence of nondimensional parameters (magnetic field strength, porosity, chemical reaction rate, and viscous dissipation) is studied to validate the usefulness of NSPS particles in clinical applications. Governing equations are solved by the finite element method, and numerical simulations are performed in the Python programming language to determine velocity, temperature, and concentration field. A multilayer perceptron regression surrogate is then trained on the finite element data and gives a predictive accuracy of 97.3%. on the numerical reference. This hybrid FEM-ML-based framework provides a fast computational tool for parameter space exploration, which helps to reduce the dependency on repeated, computationally expensive, finite element simulations. Numerical experimentation proves that the improvement of the magnetic parameter results in an approximate 18%. reduction in axial velocity, while improved porosity increases the drug penetration depth by approximately 11%. For hyperthermia-based treatments, localized heating could be used to release the drug from NSPS, whereas in pH-sensitive scenarios, the acidic tumor environment triggers automatic drug release. This approach ensures high localized action of the drugs, with the least amount of side effects on the healthy tissues.

这项工作介绍了一种机器学习增强的有限元模型,用于研究在磺化聚苯乙烯纳米颗粒(NSPS)存在的情况下拉伸动脉中的血流。该分析涉及血液动力学与纳米级添加剂的耦合,这在生物医学应用中显示出巨大的前景,如药物输送、肿瘤治疗和基于磁流体动力学机制的靶向治疗。研究了非量纲参数(磁场强度、孔隙度、化学反应速率和粘性耗散)的影响,以验证NSPS颗粒在临床应用中的有效性。采用有限元法求解控制方程,并在Python编程语言中进行数值模拟,确定速度、温度和浓度场。然后在有限元数据上训练多层感知器回归代理,并给出97.3%的预测精度。关于数值参考。这种基于混合fem - ml的框架为参数空间探索提供了一种快速计算工具,有助于减少对重复、计算成本高的有限元模拟的依赖。数值实验证明,磁参量的改善可使磁参量的改善率提高约18%。轴向速度降低,孔隙度提高,药物穿透深度增加约11%。对于基于高温的治疗,局部加热可用于从NSPS中释放药物,而在ph敏感的情况下,酸性肿瘤环境会触发药物自动释放。这种方法确保了药物的高度局部作用,对健康组织的副作用最少。
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引用次数: 0
Hybrid neural-mechanistic modeling of leptospirosis transmission with environmental drivers: Evidence from Thailand. 钩端螺旋体病传播与环境驱动因素的混合神经机制模型:来自泰国的证据。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-03-20 DOI: 10.1016/j.compbiomed.2026.111632
Sumet Khumphairan, Sudarat Chadsuthi, Peter Fransson, Yichao Liu, Charin Modchang, Joacim Rocklöv, Ekaterina Kostina

Accurate infectious-disease forecasts are essential for timely public health decision-making. In this study, we develop a hybrid modeling framework that combines compartmental models with Long Short-Term Memory (LSTM) networks to estimate a key time-varying epidemiological parameter as a case study for leptospirosis in Thailand. Our framework uses an LSTM-ODE model trained on environmental covariates (rainfall, flooding, and temperature) and infected human cases to infer the transmission rate, which shows strong seasonal and environmental dependencies. The results demonstrate that including flooding, temperature, and human cases improves the prediction of infected individuals (MSE = 35.41). Our findings suggest that the integrated hybrid framework offers a more precise solution by improving the estimation of a key epidemiological parameter. The model accommodates multiple input features and, once trained, enables inference suitable for forecasting. Its ability to generate predictions using environmental covariates, particularly when epidemiological surveillance data are incomplete or delayed.

准确的传染病预测对于及时做出公共卫生决策至关重要。在这项研究中,我们开发了一个混合建模框架,将区隔模型与长短期记忆(LSTM)网络相结合,以估计泰国钩端螺旋体病的关键时变流行病学参数。我们的框架使用环境协变量(降雨、洪水和温度)和感染人类病例训练的LSTM-ODE模型来推断传播率,这显示出强烈的季节性和环境依赖性。结果表明,将洪水、温度和人间病例考虑在内可以提高对感染个体的预测(MSE = 35.41)。我们的研究结果表明,通过改进对关键流行病学参数的估计,综合混合框架提供了更精确的解决方案。该模型可以容纳多个输入特征,一旦训练,就可以进行适合预测的推理。利用环境协变量进行预测的能力,特别是在流行病学监测数据不完整或延迟的情况下。
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引用次数: 0
A decoction-inspired genetic algorithm and PPO reinforcement learning for intelligent molecular discovery: Anti-colorectal cancer candidates from the tiao-pi AnChang formula. 受煎剂启发的遗传算法和PPO强化学习用于智能分子发现:调脾安肠方抗结直肠癌候选物。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-03-20 DOI: 10.1016/j.compbiomed.2026.111630
Can Bai, Zijian Wu, Xianjun Han, Sheng Zhou

Background: Colorectal cancer (CRC) remains among the leading causes of cancer-related mortality worldwide. The TiaoPi AnChang Decoction (TPACD), a traditional Chinese herbal formula, has shown potential anti-CRC activity in preclinical studies (in vitro and in vivo); however, its active chemical basis and key target interactions remain unclear. The complex, multicomponent nature of TPACD poses significant challenges for systematically identifying and optimizing compounds.

Purpose: This study aimed to establish an intelligent molecular discovery framework that integrates a decoction-inspired genetic algorithm (EGA) with proximal policy optimization (PPO)-based reinforcement learning to simulate the dynamic transformation and recombination processes underlying traditional herbal decoctions and to generate and prioritize in silico candidate molecules for further anti-CRC evaluation.

Study design: A parallel molecular generation strategy was developed, comprising three algorithmic pathways, namely, the basic molecular generation algorithm (BMGA), enhanced molecular generation algorithm (EMGA), and intelligent molecular generation algorithm (IMGA), which represent progressive levels of structural diversity, biological relevance, and optimization capacity.

Methods: The EGA simulated the selection-transformation-recombination principles of decoction through adaptive mutation, fragment recombination, and a diversity-preserving selection procedure. PPO-based reinforcement learning further refined the molecular properties via a reward-guided exploration of the chemical space. The BMGA enabled baseline molecular generation; the EMGA incorporated affinity-based selection; and the IMGA achieved multiobjective optimization, integrating drug likeness, novelty, and toxicity filtering. The candidate molecules were validated by affinity prediction, QED scoring, and molecular docking.

Results: All three methods generated chemically valid and pharmacologically enhanced molecules relative to the original TPACD components. The EMGA provided improved biological affinity and exploration efficiency, whereas the IMGA achieved the highest overall performance level, with superior QED and docking stability, and predicted the CRC inhibition potential of the molecules.

Conclusion: The proposed EGA-PPO framework effectively connects traditional decoction principles with modern AI-based drug design. The tri-algorithmic system (BMGA-EMGA-IMGA) provides a scalable and interpretable strategy for de novo molecular discovery, offering promising leads for acquiring natural product-derived CRC therapeutics.

背景:结直肠癌(CRC)仍然是全球癌症相关死亡的主要原因之一。调脾安肠汤(TPACD)是一种传统的中草药配方,在临床前研究(体外和体内)中显示出潜在的抗crc活性;然而,其活性化学基础和关键靶点相互作用尚不清楚。TPACD的复杂、多组分性质为系统地识别和优化化合物带来了重大挑战。目的:本研究旨在建立一个智能分子发现框架,该框架将基于煎剂的遗传算法(EGA)和基于近端策略优化(PPO)的强化学习相结合,模拟传统中药煎剂的动态转化和重组过程,并生成和优先考虑用于进一步抗crc评估的硅候选分子。研究设计:开发了一种平行分子生成策略,包括基本分子生成算法(BMGA)、增强分子生成算法(EMGA)和智能分子生成算法(IMGA)三种算法路径,分别代表了结构多样性、生物相关性和优化能力的渐进水平。方法:EGA通过自适应突变、片段重组和保持多样性的选择程序模拟汤剂的选择-转化-重组原理。基于ppo的强化学习通过对化学空间的奖励引导探索进一步细化了分子特性。BMGA实现了基线分子生成;EMGA结合了基于亲和力的选择;IMGA实现了药物相似性、新颖性和毒性过滤的多目标优化。候选分子通过亲和预测、QED评分和分子对接进行验证。结果:三种方法生成的分子相对于原TPACD成分在化学上有效,药理学上增强。EMGA具有更高的生物亲和性和探索效率,而IMGA具有更高的整体性能水平,具有更好的QED和对接稳定性,并预测了分子的CRC抑制潜力。结论:提出的EGA-PPO框架有效地将传统的汤剂原理与现代基于人工智能的药物设计结合起来。三算法系统(BMGA-EMGA-IMGA)为从头分子发现提供了可扩展和可解释的策略,为获得天然产物衍生的结直肠癌治疗提供了有希望的线索。
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引用次数: 0
Bioconvective flow and heat transport analysis of water-based nanoparticles with variable viscosity and Non-Fourier-Non-Fick effects. 具有变粘度和非傅立叶-非菲克效应的水基纳米颗粒的生物对流流动和热传递分析。
IF 6.3 2区 医学 Q1 BIOLOGY Pub Date : 2026-03-19 DOI: 10.1016/j.compbiomed.2026.111626
Muhammad Naveed Khan, Shafiq Ahmad, Aamir Abbas Khan, N Ameer Ahammad, Taoufik Saidani, Mostafa A H Abdelmohimen

Because of their improved thermal conductivity, nanofluids are very useful in heat exchangers, solar collectors, and electronics cooling, among other cooling and heat transfer systems. Ternary hybrid nanofluids (THNF), which consist of three dissimilar types of nanoparticles, provide additional enhancement and multifunctional capabilities in fields including refrigeration systems, drug delivery, and enhanced oil recovery because of their adaptable thermophysical characteristics. In the current analysis, heat and mass transport in a tri-hybrid nanofluid flowing over a Riga plate is investigated using a generalized Fourier-Fick heat and mass flux model with variable relaxation times. Further, the influence of velocity and thermal slip boundary conditions, variable viscosity and thermal conductivity are considered. Through appropriate similarity transformations, the governing partial differential equations (PDEs) are changed into a system of ordinary differential equations (ODEs). The BVP4C solver in MATLAB is then used to numerically solve the resulting ODE system. The graphical results are obtained for ternary hybrid nanofluid (CNT-Al2O3-graphene) against various parameters. From the figure, it is perceived that enhancement values of velocity slip and variable viscosity parameter reduce the fluid velocity. Further, the variable thermal and solute relaxation parameters reduce the concentration and temperature fields.

由于纳米流体具有更好的导热性,因此在热交换器、太阳能集热器、电子冷却以及其他冷却和传热系统中非常有用。三元混合纳米流体(THNF)由三种不同类型的纳米颗粒组成,由于其适应性强的热物理特性,在制冷系统、药物输送和提高石油采收率等领域提供了额外的增强和多功能能力。在当前的分析中,使用变松弛时间的广义傅立叶-菲克热和质量通量模型研究了流过里加板的三混合纳米流体的热量和质量传递。此外,还考虑了速度和热滑移边界条件、变粘度和导热系数的影响。通过适当的相似变换,将控制偏微分方程转化为常微分方程系统。然后利用MATLAB中的BVP4C求解器对得到的ODE系统进行数值求解。得到了不同参数下三元杂化纳米流体(cnt - al2o3 -石墨烯)的图形化结果。从图中可以看出,速度滑移和变粘度参数的增强值降低了流体的速度。此外,变热和溶质弛豫参数降低了浓度和温度场。
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Computers in biology and medicine
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