IVCVLGJun 15, 2021

Machine learning-based analysis of hyperspectral images for automated sepsis diagnosis

arXiv:2106.08445v113 citations
Originality Incremental advance
AI Analysis

This addresses sepsis diagnosis, a critical medical problem, but is incremental as it builds on prior HSI work and highlights limitations.

The study tackled automated sepsis diagnosis using hyperspectral imaging and machine learning, achieving over 98% accuracy on an existing dataset, but identified confounders that could overestimate performance.

Sepsis is a leading cause of mortality and critical illness worldwide. While robust biomarkers for early diagnosis are still missing, recent work indicates that hyperspectral imaging (HSI) has the potential to overcome this bottleneck by monitoring microcirculatory alterations. Automated machine learning-based diagnosis of sepsis based on HSI data, however, has not been explored to date. Given this gap in the literature, we leveraged an existing data set to (1) investigate whether HSI-based automated diagnosis of sepsis is possible and (2) put forth a list of possible confounders relevant for HSI-based tissue classification. While we were able to classify sepsis with an accuracy of over $98\,\%$ using the existing data, our research also revealed several subject-, therapy- and imaging-related confounders that may lead to an overestimation of algorithm performance when not balanced across the patient groups. We conclude that further prospective studies, carefully designed with respect to these confounders, are necessary to confirm the preliminary results obtained in this study.

Foundations

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