应用于转录组学数据的可解释机器学习模型的评估和优化

IF 11.5 2区 生物学 Q1 GENETICS & HEREDITY
Yongbing Zhao , Jinfeng Shao , Yan W. Asmann
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引用次数: 6

摘要

可解释的人工智能旨在解释机器学习模型如何做出决策,在计算机视觉领域已经开发了许多模型解释器。然而,对这些模型解释器对生物数据的适用性的理解仍然缺乏。在这项研究中,我们通过解释预训练的模型,从转录组学数据中预测组织类型,并从每个样本中确定对模型预测影响最大的顶级基因,全面评估了多个解释因素。为了提高模型解释器生成结果的可重复性和可解释性,我们在多层感知器(MLP)和卷积神经网络(CNN)两种不同的模型架构上为每个解释器提出了一系列优化策略。我们观察到三组解释器和模型架构组合具有高再现性。第二组,包含三个对聚合MLP模型的模型解释者,确定了不同组织中表现出组织特异性表现和潜在癌症生物标志物的顶级贡献基因。总之,我们的工作为使用可解释的机器学习模型探索生物机制提供了新的见解和指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Assessment and Optimization of Explainable Machine Learning Models Applied to Transcriptomic Data

Assessment and Optimization of Explainable Machine Learning Models Applied to Transcriptomic Data

Assessment and Optimization of Explainable Machine Learning Models Applied to Transcriptomic Data

Assessment and Optimization of Explainable Machine Learning Models Applied to Transcriptomic Data

Explainable artificial intelligence aims to interpret how machine learning models make decisions, and many model explainers have been developed in the computer vision field. However, understanding of the applicability of these model explainers to biological data is still lacking. In this study, we comprehensively evaluated multiple explainers by interpreting pre-trained models for predicting tissue types from transcriptomic data and by identifying the top contributing genes from each sample with the greatest impacts on model prediction. To improve the reproducibility and interpretability of results generated by model explainers, we proposed a series of optimization strategies for each explainer on two different model architectures of multilayer perceptron (MLP) and convolutional neural network (CNN). We observed three groups of explainer and model architecture combinations with high reproducibility. Group II, which contains three model explainers on aggregated MLP models, identified top contributing genes in different tissues that exhibited tissue-specific manifestation and were potential cancer biomarkers. In summary, our work provides novel insights and guidance for exploring biological mechanisms using explainable machine learning models.

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来源期刊
Genomics, Proteomics & Bioinformatics
Genomics, Proteomics & Bioinformatics Biochemistry, Genetics and Molecular Biology-Biochemistry
CiteScore
14.30
自引率
4.20%
发文量
844
审稿时长
61 days
期刊介绍: Genomics, Proteomics and Bioinformatics (GPB) is the official journal of the Beijing Institute of Genomics, Chinese Academy of Sciences / China National Center for Bioinformation and Genetics Society of China. It aims to disseminate new developments in the field of omics and bioinformatics, publish high-quality discoveries quickly, and promote open access and online publication. GPB welcomes submissions in all areas of life science, biology, and biomedicine, with a focus on large data acquisition, analysis, and curation. Manuscripts covering omics and related bioinformatics topics are particularly encouraged. GPB is indexed/abstracted by PubMed/MEDLINE, PubMed Central, Scopus, BIOSIS Previews, Chemical Abstracts, CSCD, among others.
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