QMLGJul 3, 2024

Development of Machine Learning Classifiers for Blood-based Diagnosis and Prognosis of Suspected Acute Infections and Sepsis

arXiv:2407.02737v15 citationsh-index: 67
Originality Synthesis-oriented
AI Analysis

This addresses the unmet medical need for timely infection diagnosis and prognosis in emergency care, representing an incremental application of existing methods to a clinical product.

The authors tackled the problem of rapid and accurate diagnosis and prognosis of acute infections and sepsis in emergency departments by developing a system that uses machine learning on blood-based mRNA features, achieving AUROC scores of 0.83 for three-class diagnosis and 0.77 for binary prognosis in internal validation.

We applied machine learning to the unmet medical need of rapid and accurate diagnosis and prognosis of acute infections and sepsis in emergency departments. Our solution consists of a Myrna (TM) Instrument and embedded TriVerity (TM) classifiers. The instrument measures abundances of 29 messenger RNAs in patient's blood, subsequently used as features for machine learning. The classifiers convert the input features to an intuitive test report comprising the separate likelihoods of (1) a bacterial infection (2) a viral infection, and (3) severity (need for Intensive Care Unit-level care). In internal validation, the system achieved AUROC = 0.83 on the three-class disease diagnosis (bacterial, viral, or non-infected) and AUROC = 0.77 on binary prognosis of disease severity. The Myrna, TriVerity system was granted breakthrough device designation by the United States Food and Drug Administration (FDA). This engineering manuscript teaches the standard and novel machine learning methods used to translate an academic research concept to a clinical product aimed at improving patient care, and discusses lessons learned.

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