Development and validation of a multimodal neuroimaging biomarker for electroconvulsive therapy outcome in depression: a multicenter machine learning analysis

被引:8
|
作者
Bruin, Willem Benjamin [1 ]
Oltedal, Leif [2 ,3 ]
Bartsch, Hauke [2 ]
Abbott, Christopher [4 ]
Argyelan, Miklos [5 ,6 ]
Barbour, Tracy [7 ]
Camprodon, Joan [7 ]
Chowdhury, Samadrita [7 ]
Espinoza, Randall [8 ]
Mulders, Peter [9 ]
Narr, Katherine [10 ,11 ]
Oudega, Mardien [12 ]
Rhebergen, Didi [13 ,14 ]
ten Doesschate, Freek [1 ,15 ]
Tendolkar, Indira [9 ]
van Eijndhoven, Philip [9 ]
van Exel, Eric [12 ]
van Verseveld, Mike [15 ]
Wade, Benjamin [10 ]
van Waarde, Jeroen [15 ]
Zhutovsky, Paul [1 ]
Dols, Annemiek [12 ]
van Wingen, Guido [1 ,16 ]
机构
[1] Univ Amsterdam, Dept Psychiat, Amsterdam UMC, Amsterdam Neurosci, Amsterdam, Netherlands
[2] Haukeland Hosp, Mohn Med Imaging & Visualizat Ctr, Dept Radiol, Bergen, Norway
[3] Univ Bergen, Dept Clin Med, Bergen, Norway
[4] Univ New Mexico, Dept Psychiat, Albuquerque, NM USA
[5] Feinstein Inst Med Res, Manhasset, NY USA
[6] Zucker Hillside Hosp, Glen Oaks, NY USA
[7] Harvard Med Sch, Massachusetts Gen Hosp, Div Neuropsychiat & Neuromodulat, Boston, MA USA
[8] UCLA, Dept Psychiat & Biobehav Sci, Los Angeles, CA USA
[9] Donders Inst Brain Cognit & Behav, Dept Psychiat, Nijmegen, Netherlands
[10] UCLA, Ahmanson Lovelace Brain Mapping Ctr, Dept Neurol, Los Angeles, CA USA
[11] UCLA, Ahmanson Lovelace Brain Mapping Ctr, Dept Psychiat & Biobehav Sci, Los Angeles, CA USA
[12] Amsterdam UMC, Dept Old Age Psychiat, Dept Psychiat, GGZinGeest,Locat VUmc, Amsterdam, Netherlands
[13] Mental Hlth Inst GGZ Cent, Amersfoort, South Africa
[14] Amsterdam Neurosci, Dept Psychiat, Amsterdam UMC, Locat VUmc, Amsterdam, Netherlands
[15] Rijnstate, Dept Psychiat, Arnhem, Netherlands
[16] Univ Amsterdam, Amsterdam Brain & Cognit, Amsterdam, Netherlands
关键词
Biomarker; depression; ECT; machine learning; MRI; multimodal; DEFAULT-MODE NETWORK; FUNCTIONAL MRI; METAANALYSIS; DISORDER; CONNECTIVITY; PREDICTION; PRECUNEUS; ABNORMALITIES; HIPPOCAMPAL; 1ST-EPISODE;
D O I
10.1017/S0033291723002040
中图分类号
B849 [应用心理学];
学科分类号
040203 ;
摘要
Background. Electroconvulsive therapy (ECT) is the most effective intervention for patients with treatment resistant depression. A clinical decision support tool could guide patient selection to improve the overall response rate and avoid ineffective treatments with adverse effects. Initial small-scale, monocenter studies indicate that both structural magnetic resonance imaging (sMRI) and functional MRI (fMRI) biomarkers may predict ECT outcome, but it is not known whether those results can generalize to data from other centers. The objective of this study was to develop and validate neuroimaging biomarkers for ECT outcome in a multicenter setting. Methods. Multimodal data (i.e. clinical, sMRI and resting-state fMRI) were collected from seven centers of the Global ECT-MRI Research Collaboration (GEMRIC). We used data from 189 depressed patients to evaluate which data modalities or combinations thereof could provide the best predictions for treatment remission (HAM-D score <= 7) using a support vector machine classifier. Results. Remission classification using a combination of gray matter volume and functional connectivity led to good performing models with average 0.82-0.83 area under the curve (AUC) when trained and tested on samples coming from the three largest centers (N = 109), and remained acceptable when validated using leave-one-site-out cross-validation (0.70-0.73 AUC). Conclusions. These results show that multimodal neuroimaging data can be used to predict remission with ECT for individual patients across different treatment centers, despite significant variability in clinical characteristics across centers. Future development of a clinical decision support tool applying these biomarkers may be feasible.
引用
收藏
页码:495 / 506
页数:12
相关论文
共 50 条
  • [21] Machine Learning Model to Predict Assignment of Therapy Homework in Behavioral Treatments: Algorithm Development and Validation
    Peretz, Gal
    Taylor, C. Barr
    Ruzek, Josef, I
    Jefroykin, Samuel
    Sadeh-Sharvit, Shiri
    JMIR FORMATIVE RESEARCH, 2023, 7
  • [22] Early symptom change contributes to the outcome prediction of cognitive behavioral therapy for depression patients: A machine learning approach
    Li, Fang
    Jorg, Frederike
    Merkx, Maarten J. M.
    Feenstra, Talitha
    JOURNAL OF AFFECTIVE DISORDERS, 2023, 334 : 352 - 357
  • [23] Machine Learning Analysis of Blood microRNA Data in Major Depression: A Case-Control Study for Biomarker Discovery
    Qi, Bill
    Fiori, Laura M.
    Turecki, Gustavo
    Trakadis, Yannis J.
    INTERNATIONAL JOURNAL OF NEUROPSYCHOPHARMACOLOGY, 2020, 23 (08): : 505 - 510
  • [24] Identification and validation of interferon-stimulated gene 15 as a biomarker for dermatomyositis by integrated bioinformatics analysis and machine learning
    Wang, Xingwang
    Hu, Hao
    Yan, Guangning
    Zheng, Bo
    Luo, Jinxia
    Fan, Jianyong
    FRONTIERS IN IMMUNOLOGY, 2024, 15
  • [25] Development and validation of machine learning models to predict the need for haemostatic therapy in acute upper gastrointestinal bleeding
    Nazarian, Scarlet
    Lo, Frank Po Wen
    Qiu, Jianing
    Patel, Nisha
    Lo, Benny
    Ayaru, Lakshmana
    THERAPEUTIC ADVANCES IN GASTROINTESTINAL ENDOSCOPY, 2024, 17
  • [26] Towards Outcome-Driven Patient Subgroups: A Machine Learning Analysis Across Six Depression Treatment Studies
    Benrimoh, David
    Kleinerman, Akiva
    Furukawa, Toshi A.
    Reynolds, Charles F.
    Lenze, Eric J.
    Karp, Jordan
    Mulsant, Benoit
    Armstrong, Caitrin
    Mehltretter, Joseph
    Fratila, Robert
    Perlman, Kelly
    Israel, Sonia
    Popescu, Christina
    Golden, Grace
    Qassim, Sabrina
    Anacleto, Alexandra
    Tanguay-Sela, Myriam
    Kapelner, Adam
    Rosenfeld, Ariel
    Turecki, Gustavo
    AMERICAN JOURNAL OF GERIATRIC PSYCHIATRY, 2024, 32 (03): : 280 - 292
  • [27] Prediction of Emergency Cesarean Section Using Machine Learning Methods: Development and External Validation of a Nationwide Multicenter Dataset in Republic of Korea
    Wie, Jeong Ha
    Lee, Se Jin
    Choi, Sae Kyung
    Jo, Yun Sung
    Hwang, Han Sung
    Park, Mi Hye
    Kim, Yeon Hee
    Shin, Jae Eun
    Kil, Ki Cheol
    Kim, Su Mi
    Choi, Bong Suk
    Hong, Hanul
    Seol, Hyun-Joo
    Won, Hye-Sung
    Ko, Hyun Sun
    Na, Sunghun
    LIFE-BASEL, 2022, 12 (04):
  • [28] Development and validation of a machine learning algorithm for predicting the risk of postpartum depression among pregnant women
    Zhang, Yiye
    Wang, Shuojia
    Hermann, Alison
    Joly, Rochelle
    Pathak, Jyotishman
    JOURNAL OF AFFECTIVE DISORDERS, 2021, 279 : 1 - 8
  • [29] Machine Learning Applied to Clinical Laboratory Data in Spain for COVID-19 Outcome Prediction: Model Development and Validation
    Dominguez-Olmedo, Juan L.
    Gragera-Martinez, Alvaro
    Mata, Jacinto
    Pachon Alvarez, Victoria
    JOURNAL OF MEDICAL INTERNET RESEARCH, 2021, 23 (04)
  • [30] Advancing post-traumatic seizure classification and biomarker identification: Information decomposition based multimodal fusion and explainable machine learning with missing neuroimaging data
    Akbar, Md Navid
    Ruf, Sebastian F.
    Singh, Ashutosh
    Faghihpirayesh, Razieh
    Garner, Rachael
    Bennett, Alexis
    Alba, Celina
    La Rocca, Marianna
    Imbiriba, Tales
    Erdogmus, Deniz
    Duncan, Dominique
    COMPUTERIZED MEDICAL IMAGING AND GRAPHICS, 2024, 115