Litcius/Paper detail

Liquid Biopsy-Based Detection and Response Prediction for Depression

Seungmin Kim, Youbin Kang, Hyunku Shin, Eun Byul Lee, Byung‐Joo Ham, Yeonho Choi

2024ACS Nano13 citationsDOIOpen Access PDF

Abstract

Proactively predicting antidepressant treatment response before medication failures is crucial, as it reduces unsuccessful attempts and facilitates the development of personalized therapeutic strategies, ultimately enhancing treatment efficacy. The current decision-making process, which heavily depends on subjective indicators, underscores the need for an objective, indicator-based approach. This study developed a method for detecting depression and predicting treatment response through deep learning-based spectroscopic analysis of extracellular vesicles (EVs) from plasma. EVs were isolated from the plasma of both nondepressed and depressed groups, followed by Raman signal acquisition, which was used for AI algorithm development. The algorithm successfully distinguished depression patients from healthy individuals and those with panic disorder, achieving an AUC accuracy of 0.95. This demonstrates the model's capability to selectively diagnose depression within a nondepressed group, including those with other mental health disorders. Furthermore, the algorithm identified depression-diagnosed patients likely to respond to antidepressants, classifying responders and nonresponders with an AUC accuracy of 0.91. To establish a diagnostic foundation, the algorithm applied explainable AI (XAI), enabling personalized medicine for companion diagnostics and highlighting its potential for the development of liquid biopsy-based mental disorder diagnosis.

Topics & Concepts

Materials scienceDepression (economics)Liquid biopsyNanotechnologyComputer scienceArtificial intelligenceMedicineInternal medicineCancerMacroeconomicsEconomicsCell Image Analysis TechniquesMachine Learning in HealthcareMetabolomics and Mass Spectrometry Studies