Machine learning-based prediction of illness course in major depression: The relevance of risk factors
Major depressive disorder (MDD) comes along with an increased risk of recurrence and poor course of illness. Machine learning has recently shown promise in the prediction of mental illness, yet models aiming to predict MDD course are still rare and do not quantify the predictive value of established...
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Veröffentlicht in: | Journal of affective disorders 2025-01, Vol.374, p.513-522 |
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creator | Teutenberg, Lea Stein, Frederike Thomas-Odenthal, Florian Usemann, Paula Brosch, Katharina Winter, Nils Goltermann, Janik Leenings, Ramona Konowski, Maximilian Barkhau, Carlotta Fisch, Lukas Meinert, Susanne Flinkenflügel, Kira Bonnekoh, Linda Thiel, Katharina Kraus, Anna Alexander, Nina Jansen, Andreas Nenadić, Igor Straube, Benjamin Hahn, Tim Dannlowski, Udo Jamalabadi, Hamidreza Kircher, Tilo |
description | Major depressive disorder (MDD) comes along with an increased risk of recurrence and poor course of illness. Machine learning has recently shown promise in the prediction of mental illness, yet models aiming to predict MDD course are still rare and do not quantify the predictive value of established MDD recurrence risk factors.
We analyzed N = 571 MDD patients from the Marburg-Münster Affective Disorder Cohort Study (MACS). Using random forest classifiers, we predicted i) recurrence of depressive episodes and ii) MDD disease trajectories, within a 2-year interval. Trajectories were identified through latent profile analysis, using a discovery and an internal validation sample. Three distinct models were implemented for predictions: two incorporating only literature-derived MDD recurrence risk factors, and a third incorporating a broader set of explorative features.
Basing predictions on only seven recurrence risk factors, MDD recurrence could be predicted with a balanced accuracy (BACC) of 62.83 % and MDD trajectories were predicted with highest performance achieved for a remitted (BACC = 64.23 %) and a severe MDD trajectory (BACC = 63.17 %). Risk factors included childhood maltreatment, previous depressive episodes, residual symptoms, comorbid anxiety, age of onset, depression severity, and neuroticism. Including a broader feature set only yielded in minor increase of predictive performance.
Lacking external validation, generalizability to other samples remains uncertain.
MDD recurrence and disease trajectories can be predicted based on literature-derived recurrence risk factors. Model performance must increase to be of use in clinical practice which could be achieved by including multimodal risk factors.
•Using a machine learning model based on seven literature-derived recurrence risk factors, we were able to predict recurrence of depressive episodes in a 2-year interval•Four MDD disease trajectories were identified and validated in a separate sample: a remitted, a dysthymic, a moderate, and a severe trajectory•Risk factor-based machine learning models showed moderate predictive accuracy for severe and remitted trajectories but poor performance for dysthymic and moderate trajectories•Poor MDD illness course can be predicted from a small range of literature-derived risk factors |
doi_str_mv | 10.1016/j.jad.2025.01.060 |
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We analyzed N = 571 MDD patients from the Marburg-Münster Affective Disorder Cohort Study (MACS). Using random forest classifiers, we predicted i) recurrence of depressive episodes and ii) MDD disease trajectories, within a 2-year interval. Trajectories were identified through latent profile analysis, using a discovery and an internal validation sample. Three distinct models were implemented for predictions: two incorporating only literature-derived MDD recurrence risk factors, and a third incorporating a broader set of explorative features.
Basing predictions on only seven recurrence risk factors, MDD recurrence could be predicted with a balanced accuracy (BACC) of 62.83 % and MDD trajectories were predicted with highest performance achieved for a remitted (BACC = 64.23 %) and a severe MDD trajectory (BACC = 63.17 %). Risk factors included childhood maltreatment, previous depressive episodes, residual symptoms, comorbid anxiety, age of onset, depression severity, and neuroticism. Including a broader feature set only yielded in minor increase of predictive performance.
Lacking external validation, generalizability to other samples remains uncertain.
MDD recurrence and disease trajectories can be predicted based on literature-derived recurrence risk factors. Model performance must increase to be of use in clinical practice which could be achieved by including multimodal risk factors.
•Using a machine learning model based on seven literature-derived recurrence risk factors, we were able to predict recurrence of depressive episodes in a 2-year interval•Four MDD disease trajectories were identified and validated in a separate sample: a remitted, a dysthymic, a moderate, and a severe trajectory•Risk factor-based machine learning models showed moderate predictive accuracy for severe and remitted trajectories but poor performance for dysthymic and moderate trajectories•Poor MDD illness course can be predicted from a small range of literature-derived risk factors</description><identifier>ISSN: 0165-0327</identifier><identifier>ISSN: 1573-2517</identifier><identifier>EISSN: 1573-2517</identifier><identifier>DOI: 10.1016/j.jad.2025.01.060</identifier><identifier>PMID: 39818338</identifier><language>eng</language><publisher>Netherlands: Elsevier B.V</publisher><subject>Disease trajectory ; Illness course ; Machine learning ; Major depressive disorder ; Recurrence ; Risk factors</subject><ispartof>Journal of affective disorders, 2025-01, Vol.374, p.513-522</ispartof><rights>2025</rights><rights>Copyright © 2025 The Authors. Published by Elsevier B.V. All rights reserved.</rights><lds50>peer_reviewed</lds50><woscitedreferencessubscribed>false</woscitedreferencessubscribed><cites>FETCH-LOGICAL-c1508-98b446efe8a34de539543e85057087eb8c2f8271717f8ec0329778e734e55e693</cites></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><linktohtml>$$Uhttps://www.sciencedirect.com/science/article/pii/S0165032725000771$$EHTML$$P50$$Gelsevier$$H</linktohtml><link.rule.ids>314,776,780,3537,27901,27902,65306</link.rule.ids><backlink>$$Uhttps://www.ncbi.nlm.nih.gov/pubmed/39818338$$D View this record in MEDLINE/PubMed$$Hfree_for_read</backlink></links><search><creatorcontrib>Teutenberg, Lea</creatorcontrib><creatorcontrib>Stein, Frederike</creatorcontrib><creatorcontrib>Thomas-Odenthal, Florian</creatorcontrib><creatorcontrib>Usemann, Paula</creatorcontrib><creatorcontrib>Brosch, Katharina</creatorcontrib><creatorcontrib>Winter, Nils</creatorcontrib><creatorcontrib>Goltermann, Janik</creatorcontrib><creatorcontrib>Leenings, Ramona</creatorcontrib><creatorcontrib>Konowski, Maximilian</creatorcontrib><creatorcontrib>Barkhau, Carlotta</creatorcontrib><creatorcontrib>Fisch, Lukas</creatorcontrib><creatorcontrib>Meinert, Susanne</creatorcontrib><creatorcontrib>Flinkenflügel, Kira</creatorcontrib><creatorcontrib>Bonnekoh, Linda</creatorcontrib><creatorcontrib>Thiel, Katharina</creatorcontrib><creatorcontrib>Kraus, Anna</creatorcontrib><creatorcontrib>Alexander, Nina</creatorcontrib><creatorcontrib>Jansen, Andreas</creatorcontrib><creatorcontrib>Nenadić, Igor</creatorcontrib><creatorcontrib>Straube, Benjamin</creatorcontrib><creatorcontrib>Hahn, Tim</creatorcontrib><creatorcontrib>Dannlowski, Udo</creatorcontrib><creatorcontrib>Jamalabadi, Hamidreza</creatorcontrib><creatorcontrib>Kircher, Tilo</creatorcontrib><title>Machine learning-based prediction of illness course in major depression: The relevance of risk factors</title><title>Journal of affective disorders</title><addtitle>J Affect Disord</addtitle><description>Major depressive disorder (MDD) comes along with an increased risk of recurrence and poor course of illness. Machine learning has recently shown promise in the prediction of mental illness, yet models aiming to predict MDD course are still rare and do not quantify the predictive value of established MDD recurrence risk factors.
We analyzed N = 571 MDD patients from the Marburg-Münster Affective Disorder Cohort Study (MACS). Using random forest classifiers, we predicted i) recurrence of depressive episodes and ii) MDD disease trajectories, within a 2-year interval. Trajectories were identified through latent profile analysis, using a discovery and an internal validation sample. Three distinct models were implemented for predictions: two incorporating only literature-derived MDD recurrence risk factors, and a third incorporating a broader set of explorative features.
Basing predictions on only seven recurrence risk factors, MDD recurrence could be predicted with a balanced accuracy (BACC) of 62.83 % and MDD trajectories were predicted with highest performance achieved for a remitted (BACC = 64.23 %) and a severe MDD trajectory (BACC = 63.17 %). Risk factors included childhood maltreatment, previous depressive episodes, residual symptoms, comorbid anxiety, age of onset, depression severity, and neuroticism. Including a broader feature set only yielded in minor increase of predictive performance.
Lacking external validation, generalizability to other samples remains uncertain.
MDD recurrence and disease trajectories can be predicted based on literature-derived recurrence risk factors. Model performance must increase to be of use in clinical practice which could be achieved by including multimodal risk factors.
•Using a machine learning model based on seven literature-derived recurrence risk factors, we were able to predict recurrence of depressive episodes in a 2-year interval•Four MDD disease trajectories were identified and validated in a separate sample: a remitted, a dysthymic, a moderate, and a severe trajectory•Risk factor-based machine learning models showed moderate predictive accuracy for severe and remitted trajectories but poor performance for dysthymic and moderate trajectories•Poor MDD illness course can be predicted from a small range of literature-derived risk factors</description><subject>Disease trajectory</subject><subject>Illness course</subject><subject>Machine learning</subject><subject>Major depressive disorder</subject><subject>Recurrence</subject><subject>Risk factors</subject><issn>0165-0327</issn><issn>1573-2517</issn><issn>1573-2517</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2025</creationdate><recordtype>article</recordtype><recordid>eNp9kDtP7DAQhS0EguXxA26DXNIkjOM4drgVQrwkEA3UlteZgHOz8V7PLhL_Hq8WKNEU03znSOdj7I-AUoBozodycF1ZQaVKECU0sMNmQmlZVEroXTbLjCpAVvqAHRINANC0GvbZgWyNMFKaGesfnX8LE_IRXZrC9FrMHWHHlwm74FchTjz2PIzjhETcx3Ui5GHiCzfExDvMHFGmLvjzG_KEI767yeMmlAL9473zq5jomO31biQ8-fpH7OXm-vnqrnh4ur2_unwovFBgitbM67rBHo2TdYdKtqqWaBQoDUbj3PiqN5UW-XqDPk9rtTaoZY1KYdPKI3a27V2m-H-NtLKLQB7H0U0Y12SlUI2S0BiVUbFFfYpECXu7TGHh0ocVYDd67WCzXrvRa0HYrDdnTr_q1_MFdj-Jb58Z-LsFMI98D5gs-YBZSBcS-pXtYvil_hMxcopO</recordid><startdate>20250114</startdate><enddate>20250114</enddate><creator>Teutenberg, Lea</creator><creator>Stein, Frederike</creator><creator>Thomas-Odenthal, Florian</creator><creator>Usemann, Paula</creator><creator>Brosch, Katharina</creator><creator>Winter, Nils</creator><creator>Goltermann, Janik</creator><creator>Leenings, Ramona</creator><creator>Konowski, Maximilian</creator><creator>Barkhau, Carlotta</creator><creator>Fisch, Lukas</creator><creator>Meinert, Susanne</creator><creator>Flinkenflügel, Kira</creator><creator>Bonnekoh, Linda</creator><creator>Thiel, Katharina</creator><creator>Kraus, Anna</creator><creator>Alexander, Nina</creator><creator>Jansen, Andreas</creator><creator>Nenadić, Igor</creator><creator>Straube, Benjamin</creator><creator>Hahn, Tim</creator><creator>Dannlowski, Udo</creator><creator>Jamalabadi, Hamidreza</creator><creator>Kircher, Tilo</creator><general>Elsevier B.V</general><scope>NPM</scope><scope>AAYXX</scope><scope>CITATION</scope><scope>7X8</scope></search><sort><creationdate>20250114</creationdate><title>Machine learning-based prediction of illness course in major depression: The relevance of risk factors</title><author>Teutenberg, Lea ; 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Machine learning has recently shown promise in the prediction of mental illness, yet models aiming to predict MDD course are still rare and do not quantify the predictive value of established MDD recurrence risk factors.
We analyzed N = 571 MDD patients from the Marburg-Münster Affective Disorder Cohort Study (MACS). Using random forest classifiers, we predicted i) recurrence of depressive episodes and ii) MDD disease trajectories, within a 2-year interval. Trajectories were identified through latent profile analysis, using a discovery and an internal validation sample. Three distinct models were implemented for predictions: two incorporating only literature-derived MDD recurrence risk factors, and a third incorporating a broader set of explorative features.
Basing predictions on only seven recurrence risk factors, MDD recurrence could be predicted with a balanced accuracy (BACC) of 62.83 % and MDD trajectories were predicted with highest performance achieved for a remitted (BACC = 64.23 %) and a severe MDD trajectory (BACC = 63.17 %). Risk factors included childhood maltreatment, previous depressive episodes, residual symptoms, comorbid anxiety, age of onset, depression severity, and neuroticism. Including a broader feature set only yielded in minor increase of predictive performance.
Lacking external validation, generalizability to other samples remains uncertain.
MDD recurrence and disease trajectories can be predicted based on literature-derived recurrence risk factors. Model performance must increase to be of use in clinical practice which could be achieved by including multimodal risk factors.
•Using a machine learning model based on seven literature-derived recurrence risk factors, we were able to predict recurrence of depressive episodes in a 2-year interval•Four MDD disease trajectories were identified and validated in a separate sample: a remitted, a dysthymic, a moderate, and a severe trajectory•Risk factor-based machine learning models showed moderate predictive accuracy for severe and remitted trajectories but poor performance for dysthymic and moderate trajectories•Poor MDD illness course can be predicted from a small range of literature-derived risk factors</abstract><cop>Netherlands</cop><pub>Elsevier B.V</pub><pmid>39818338</pmid><doi>10.1016/j.jad.2025.01.060</doi><tpages>10</tpages></addata></record> |
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subjects | Disease trajectory Illness course Machine learning Major depressive disorder Recurrence Risk factors |
title | Machine learning-based prediction of illness course in major depression: The relevance of risk factors |
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