{"title":"使用MetaFormer注意力预测神经突退化的高通量机器学习框架","authors":"Kuanren Qian , Genesis Omana Suarez , Toshihiko Nambara , Takahisa Kanekiyo , Yongjie Jessica Zhang","doi":"10.1016/j.cma.2025.118003","DOIUrl":null,"url":null,"abstract":"<div><div>Neurodevelopmental disorders (NDDs) cover a variety of conditions, including autism spectrum disorder, attention-deficit/hyperactivity disorder, and epilepsy, which impair the central and peripheral nervous systems. Their high comorbidity and complex etiologies present significant challenges for accurate diagnosis and effective treatments. Conventional clinical and experimental studies are time-intensive, burdening research progress considerably. This paper introduces a high-throughput machine learning (ML) framework for modeling neurite deteriorations associated with NDDs, integrating synthetic data generation, experimental images, and ML models. The synthetic data generator utilizes an isogeometric analysis (IGA)-based phase field model to capture diverse neurite deterioration patterns such as neurite retraction, atrophy, and fragmentation while mitigating the limitations of scarce experimental data. The ML model utilizes MetaFormer-based gated spatiotemporal attention architecture with deep temporal layers and provides fast predictions. The framework effectively captures long-range temporal dependencies and intricate morphological transformations with average errors of 1.9641% and 6.0339% for synthetic and experimental neurite deterioration, respectively. Seamlessly integrating simulations, experiments, and ML framework can guide researchers to make informed experimental decisions by predicting potential experimental outcomes, significantly reducing costs and saving valuable time. It can also advance our understanding of neurite deterioration and provide a scalable solution for exploring complex neurological mechanisms, contributing to the development of targeted treatments.</div></div>","PeriodicalId":55222,"journal":{"name":"Computer Methods in Applied Mechanics and Engineering","volume":"442 ","pages":"Article 118003"},"PeriodicalIF":6.9000,"publicationDate":"2025-04-24","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"High-throughput machine learning framework for predicting neurite deterioration using MetaFormer attention\",\"authors\":\"Kuanren Qian , Genesis Omana Suarez , Toshihiko Nambara , Takahisa Kanekiyo , Yongjie Jessica Zhang\",\"doi\":\"10.1016/j.cma.2025.118003\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><div>Neurodevelopmental disorders (NDDs) cover a variety of conditions, including autism spectrum disorder, attention-deficit/hyperactivity disorder, and epilepsy, which impair the central and peripheral nervous systems. 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The framework effectively captures long-range temporal dependencies and intricate morphological transformations with average errors of 1.9641% and 6.0339% for synthetic and experimental neurite deterioration, respectively. Seamlessly integrating simulations, experiments, and ML framework can guide researchers to make informed experimental decisions by predicting potential experimental outcomes, significantly reducing costs and saving valuable time. 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引用次数: 0
摘要
神经发育障碍(NDDs)包括自闭症谱系障碍、注意力缺陷/多动障碍和癫痫等多种损害中枢和外周神经系统的疾病。这些疾病的并发率高、病因复杂,给准确诊断和有效治疗带来了巨大挑战。传统的临床和实验研究耗费大量时间,大大影响了研究进展。本文介绍了一种高通量机器学习(ML)框架,用于模拟与 NDD 相关的神经元退化,该框架集成了合成数据生成、实验图像和 ML 模型。合成数据生成器利用基于等几何分析(IGA)的相场模型来捕捉神经元的各种退化模式,如神经元回缩、萎缩和碎裂,同时缓解了稀缺实验数据的局限性。ML 模型利用基于 MetaFormer 的门控时空注意力架构和深度时间层,并提供快速预测。该框架能有效捕捉长程时间依赖性和错综复杂的形态变化,对合成和实验神经元退化的平均误差分别为 1.9641% 和 6.0339%。将模拟、实验和 ML 框架无缝整合在一起,可以通过预测潜在的实验结果来指导研究人员做出明智的实验决策,从而大大降低成本并节省宝贵的时间。它还能促进我们对神经元退化的理解,并为探索复杂的神经机制提供可扩展的解决方案,有助于开发有针对性的治疗方法。
High-throughput machine learning framework for predicting neurite deterioration using MetaFormer attention
Neurodevelopmental disorders (NDDs) cover a variety of conditions, including autism spectrum disorder, attention-deficit/hyperactivity disorder, and epilepsy, which impair the central and peripheral nervous systems. Their high comorbidity and complex etiologies present significant challenges for accurate diagnosis and effective treatments. Conventional clinical and experimental studies are time-intensive, burdening research progress considerably. This paper introduces a high-throughput machine learning (ML) framework for modeling neurite deteriorations associated with NDDs, integrating synthetic data generation, experimental images, and ML models. The synthetic data generator utilizes an isogeometric analysis (IGA)-based phase field model to capture diverse neurite deterioration patterns such as neurite retraction, atrophy, and fragmentation while mitigating the limitations of scarce experimental data. The ML model utilizes MetaFormer-based gated spatiotemporal attention architecture with deep temporal layers and provides fast predictions. The framework effectively captures long-range temporal dependencies and intricate morphological transformations with average errors of 1.9641% and 6.0339% for synthetic and experimental neurite deterioration, respectively. Seamlessly integrating simulations, experiments, and ML framework can guide researchers to make informed experimental decisions by predicting potential experimental outcomes, significantly reducing costs and saving valuable time. It can also advance our understanding of neurite deterioration and provide a scalable solution for exploring complex neurological mechanisms, contributing to the development of targeted treatments.
期刊介绍:
Computer Methods in Applied Mechanics and Engineering stands as a cornerstone in the realm of computational science and engineering. With a history spanning over five decades, the journal has been a key platform for disseminating papers on advanced mathematical modeling and numerical solutions. Interdisciplinary in nature, these contributions encompass mechanics, mathematics, computer science, and various scientific disciplines. The journal welcomes a broad range of computational methods addressing the simulation, analysis, and design of complex physical problems, making it a vital resource for researchers in the field.