Individual-Level Prediction of Exposure Therapy Outcome Using Structural and Functional MRI Data in Spider Phobia: A Machine-Learning Study

被引:1
|
作者
Chavanne, Alice V. [1 ,2 ]
Meinke, Charlotte [1 ]
Langhammer, Till [1 ]
Roesmann, Kati [3 ,4 ,5 ]
Boehnlein, Joscha [6 ]
Gathmann, Bettina [7 ]
Herrmann, Martin J. [8 ]
Junghoefer, Markus [4 ,9 ]
Klahn, Luisa [10 ]
Schwarzmeier, Hanna [8 ]
Seeger, Fabian R. [8 ]
Siminski, Niklas [8 ]
Straube, Thomas [6 ,7 ]
Dannlowski, Udo [6 ]
Lueken, Ulrike [1 ]
Leehr, Elisabeth J. [6 ]
Hilbert, Kevin [1 ]
机构
[1] Humboldt Univ, Dept Psychol, Berlin, Germany
[2] Univ Paris Saclay, Ecole Normale Super Paris Saclay, CNRS, INSERM,Trajectoires Dev & Psychiat,U1299,Ctr Borel, Saclay, France
[3] Univ Siegen, Inst Clin Psychol & Psychotherapy, Siegen, Germany
[4] Univ Munster, Inst Biomagnetism & Biosignalanal, Munster, Germany
[5] Univ Osnabruck, Inst Psychol, Unit Clin Psychol & Psychotherapy Childhood & Adol, Osnabruck, Germany
[6] Univ Munster, Inst Translat Psychiat, Munster, Germany
[7] Univ Munster, Inst Med Psychol & Syst Neurosci, Munster, Germany
[8] Univ Hosp Wurzburg, Ctr Mental Hlth, Dept Psychiat Psychosomat & Psychotherapy, Wurzburg, Germany
[9] Univ Munster, Otto Creutzfeld Ctr Cognit & Behav Neurosci, Munster, Germany
[10] Univ Gothenburg, Inst Neurosci & Physiol, Dept Psychiat & Neurochem, Gothenburg, Sweden
关键词
COGNITIVE-BEHAVIORAL THERAPY; SIGNAL VARIABILITY; ANXIETY; FEAR; DISORDERS;
D O I
10.1155/2023/8594273
中图分类号
B849 [应用心理学];
学科分类号
040203 ;
摘要
Machine-learning prediction studies have shown potential to inform treatment stratification, but recent efforts to predict psychotherapy outcomes with clinical routine data have only resulted in moderate prediction accuracies. Neuroimaging data showed promise to predict treatment outcome, but previous prediction attempts have been exploratory and reported small clinical sample sizes. Herein, we aimed to examine the incremental predictive value of neuroimaging data in contrast to clinical and demographic data alone (for which results were previously published), using a two-level multimodal ensemble machine-learning strategy. We used pretreatment structural and task-based fMRI data to predict virtual reality exposure therapy outcome in a bicentric sample of N=190 patients with spider phobia. First, eight 1st-level random forest classifications were conducted using separate data modalities (clinical questionnaire scores and sociodemographic data, cortical thickness and gray matter volumes, functional activation, connectivity, connectivity-derived graph metrics, and BOLD signal variance). Then, the resulting predictions were used to train a 2nd-level classifier that produced a final prediction. No 1st-level or 2nd-level classifier performed above chance level except BOLD signal variance, which showed potential as a contributor to higher-level prediction from multiple regions across the brain (1st-level balanced accuracy=0.63). Overall, neuroimaging data did not provide any incremental accuracy for treatment outcome prediction in patients with spider phobia with respect to clinical and sociodemographic data alone. Thus, we advise caution in the interpretation of prediction performances from small-scale, single-site patient samples. Larger multimodal datasets are needed to further investigate individual-level neuroimaging predictors of therapy response in anxiety disorders.
引用
收藏
页数:11
相关论文
共 27 条
  • [1] Diagnostic classification of specific phobia subtypes using structural MRI data: a machine-learning approach
    Lueken, Ulrike
    Hilbert, Kevin
    Wittchen, Hans-Ulrich
    Reif, Andreas
    Hahn, Tim
    [J]. JOURNAL OF NEURAL TRANSMISSION, 2015, 122 (01) : 123 - 134
  • [2] Diagnostic classification of specific phobia subtypes using structural MRI data: a machine-learning approach
    Ulrike Lueken
    Kevin Hilbert
    Hans-Ulrich Wittchen
    Andreas Reif
    Tim Hahn
    [J]. Journal of Neural Transmission, 2015, 122 : 123 - 134
  • [3] A Machine-Learning Approach for Estimating Subgroup- and Individual-Level Treatment Effects: An Illustration Using the 65 Trial
    Sadique, Zia
    Grieve, Richard
    Diaz-Ordaz, Karla
    Mouncey, Paul
    Lamontagne, Francois
    O'Neill, Stephen
    [J]. MEDICAL DECISION MAKING, 2022, 42 (07) : 923 - 936
  • [4] Identification of amnestic mild cognitive impairment by structural and functional MRI using a machine-learning approach
    Hwang, Hyunyoung
    Kim, Si Eun
    Lee, Ho-Joon
    Lee, Dong Ah
    Park, Kang Min
    [J]. CLINICAL NEUROLOGY AND NEUROSURGERY, 2024, 238
  • [5] Using Machine-Learning on Proteomics and Lipidomics Data to Improve Individual Prediction of Chronicity in Major Depressive Disorder
    Habets, Philippe
    Thomas, Rajat
    van Wingen, Guido
    Penninx, Brenda
    Meijer, Onno
    Vinkers, Christiaan
    [J]. NEUROPSYCHOPHARMACOLOGY, 2021, 46 (SUPPL 1) : 243 - 244
  • [6] Machine-Learning and RadiomicsBased Preoperative Prediction of Ki-67 Expression in Glioma Using MRI Data
    Ni, Jiaying
    Zhang, Hongjian
    Yang, Qing
    Fan, Xiao
    Xu, Junqing
    Sun, Jianing
    Zhang, Junxia
    Hu, Yifang
    Xiao, Zheming
    Zhao, Yuhong
    Zhu, Hongli
    Shi, Xian
    Feng, Wei
    Wang, Junjie
    Wan, Cheng
    Zhang, Xin
    Liu, Yun
    You, Yongping
    Yu, Yun
    [J]. ACADEMIC RADIOLOGY, 2024, 31 (08) : 3397 - 3405
  • [7] Prediction of Individual Response to Electroconvulsive Therapy via Machine Learning on Structural Magnetic Resonance Imaging Data
    Redlich, Ronny
    Opel, Nils
    Grotegerd, Dominik
    Dohm, Katharina
    Zaremba, Dario
    Buerger, Christian
    Muenker, Sandra
    Muehlmann, Lisa
    Wahl, Patricia
    Heindel, Walter
    Arolt, Volker
    Alferink, Judith
    Zwanzger, Peter
    Zavorotnyy, Maxim
    Kugel, Harald
    Dannlowski, Udo
    [J]. JAMA PSYCHIATRY, 2016, 73 (06) : 557 - 564
  • [8] Prediction of newborn's body mass index using nationwide multicenter ultrasound data: a machine-learning study
    Lee, Kwang-Sig
    Kim, Ho Yeon
    Lee, Se Jin
    Kwon, Sung Ok
    Na, Sunghun
    Hwang, Han Sung
    Park, Mi Hye
    Ahn, Ki Hoon
    [J]. BMC PREGNANCY AND CHILDBIRTH, 2021, 21 (01)
  • [9] Prediction of newborn’s body mass index using nationwide multicenter ultrasound data: a machine-learning study
    Kwang-Sig Lee
    Ho Yeon Kim
    Se Jin Lee
    Sung Ok Kwon
    Sunghun Na
    Han Sung Hwang
    Mi Hye Park
    Ki Hoon Ahn
    [J]. BMC Pregnancy and Childbirth, 21
  • [10] Identification and Therapeutic Outcome Prediction of Cervical Spondylotic Myelopathy Based on the Functional Connectivity From Resting-State Functional MRI Data: A Preliminary Machine Learning Study
    Su, Qian
    Zhao, Rui
    Wang, ShuoWen
    Tu, HaoYang
    Guo, Xing
    Yang, Fan
    [J]. FRONTIERS IN NEUROLOGY, 2021, 12