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Classification of fNIRS signals from adolescents with MDD in suicide high- and low-risk groups using machine learning

Seong‐Hyeon Kim, Haram Yoon, Jaeyoung Shin, Chan-Mo Yang

2023Journal of Affective Disorders13 citationsDOIOpen Access PDF

Abstract

Prefrontal cortex activation is attenuated during cognitive tasks in patients with suicidal ideation or major depressive disorder (MDD). However, the apparent relationship between patients with MDD, especially suicide high-risk (SHR) adolescents, and the characteristics of their hemodynamic responses has not yet been elucidated. To investigate this relationship, we recruited 30 patients with MDD aged 13−19. Functional near-infrared spectroscopy (fNIRS) data were collected for all patients during a Stroop test. Through a ten-time iterative leave-one-out cross-validation via 1000 iterative random search-based feature selections, we achieved a generalized classification accuracy of 70.3±5.0 % (from min. 63.3 % to max. 76.7 %). From the results of random search-based feature selection, Ch08oxy and Ch09deoxy were identified as the two most relevant fNIRS channels. This finding implies that these fNIRS channels can be used as neurological biomarkers to distinguish SHR adolescents with MDD from suicide low-risk (SLR) adolescents. In addition, we determined the oxy-Hb channels of the SHR group, except for Ch01oxy, Ch02oxy, Ch11oxy, and Ch14oxy, were hyperactivated compared to the SLR group.

Topics & Concepts

Major depressive disorderStroop effectSuicidal ideationPrefrontal cortexPsychologyFunctional near-infrared spectroscopyClinical psychologyCognitionSuicide attemptPoison controlPsychiatryAudiologyMedicineSuicide preventionMedical emergencyHeart Rate Variability and Autonomic ControlFunctional Brain Connectivity StudiesSuicide and Self-Harm Studies
Classification of fNIRS signals from adolescents with MDD in suicide high- and low-risk groups using machine learning | Litcius