In recent years, infectious disease diagnosis has increasingly turned to host-centered approaches as a complement to pathogen-directed ones. The former, however, typically requires the interpretation of complex multiple biomarker datasets to arrive at an informative diagnostic outcome. This report describes a machine learning (ML)-based classification workflow that is intended as a template for researchers seeking to apply ML approaches for developing host-based infectious disease biomarker classifiers. As an example, we built a classification model that could accurately distinguish between three disease etiology classes: bacterial, viral, and normal in human sera using host protein biomarkers of known diagnostic utility. After collecting protein data from known disease samples, we trained a series of increasingly complex Auto-ML models until arriving at an optimized classifier that could differentiate viral, bacterial, and non-disease samples. Even when limited to a relatively small training set size, the model had robust diagnostic characteristics and performed well when faced with a blinded sample set. We present here a flexible approach for applying an Auto-ML-based workflow for the identification of host biomarker classifiers with diagnostic utility for infectious disease, and which can readily be adapted for multiple biomarker classes and disease states.
Application of a Machine Learning-Based Classification Approach for Developing Host Protein Diagnostic Models for Infectious Disease.
应用基于机器学习的分类方法开发传染病宿主蛋白诊断模型
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作者:Scherr Thomas F, Douglas Christina E, Schaecher Kurt E, Schoepp Randal J, Ricks Keersten M, Shoemaker Charles J
| 期刊: | Diagnostics | 影响因子: | 3.300 |
| 时间: | 2024 | 起止号: | 2024 Jun 18; 14(12):1290 |
| doi: | 10.3390/diagnostics14121290 | 研究方向: | 其它 |
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