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Dismantling, optimising, and personalising internet cognitive behavioural therapy for depression: a systematic review and component network meta-analysis using individual data

Authors :
Furukawa, TA
Suganuma, A
Ostinelli, EG
Andersson, G
Beevers, CG
Shumake, J
Berger, T
Boele, FW
Buntrock, C
Carlbring, P
Choi, I
Christensen, H
Mackinnon, A
Dahne, J
Huibers, MJH
Ebert, DD
Farrer, L
Forand, NR
Strunk, DR
Ezawa, ID
Forsell, E
Kaldo, V
Geraedts, A
Gilbody, S
Littlewood, E
Brabyn, S
Hadjistavropoulos, HD
Schneider, LH
Johansson, R
Kenter, R
Kivi, M
Bjorkelund, C
Kleiboer, A
Riper, H
Klein, JP
Schroder, J
Meyer, B
Moritz, S
Bucker, L
Lintvedt, O
Johansson, P
Lundgren, J
Milgrom, J
Gemmill, AW
Mohr, DC
Montero-Marin, J
Garcia-Campayo, J
Nobis, S
Zarski, A-C
O'Moore, K
Williams, AD
Newby, JM
Perini, S
Phillips, R
Schneider, J
Pots, W
Pugh, NE
Richards, D
Rosso, IM
Rauch, SL
Sheeber, LB
Smith, J
Spek, V
Pop, VJ
Unlu, B
van Bastelaar, KMP
van Luenen, S
Garnefski, N
Kraaij, V
Vernmark, K
Warmerdam, L
van Straten, A
Zagorscak, P
Knaevelsrud, C
Heinrich, M
Miguel, C
Cipriani, A
Efthimiou, O
Karyotaki, E
Cuijpers, P
Furukawa, TA
Suganuma, A
Ostinelli, EG
Andersson, G
Beevers, CG
Shumake, J
Berger, T
Boele, FW
Buntrock, C
Carlbring, P
Choi, I
Christensen, H
Mackinnon, A
Dahne, J
Huibers, MJH
Ebert, DD
Farrer, L
Forand, NR
Strunk, DR
Ezawa, ID
Forsell, E
Kaldo, V
Geraedts, A
Gilbody, S
Littlewood, E
Brabyn, S
Hadjistavropoulos, HD
Schneider, LH
Johansson, R
Kenter, R
Kivi, M
Bjorkelund, C
Kleiboer, A
Riper, H
Klein, JP
Schroder, J
Meyer, B
Moritz, S
Bucker, L
Lintvedt, O
Johansson, P
Lundgren, J
Milgrom, J
Gemmill, AW
Mohr, DC
Montero-Marin, J
Garcia-Campayo, J
Nobis, S
Zarski, A-C
O'Moore, K
Williams, AD
Newby, JM
Perini, S
Phillips, R
Schneider, J
Pots, W
Pugh, NE
Richards, D
Rosso, IM
Rauch, SL
Sheeber, LB
Smith, J
Spek, V
Pop, VJ
Unlu, B
van Bastelaar, KMP
van Luenen, S
Garnefski, N
Kraaij, V
Vernmark, K
Warmerdam, L
van Straten, A
Zagorscak, P
Knaevelsrud, C
Heinrich, M
Miguel, C
Cipriani, A
Efthimiou, O
Karyotaki, E
Cuijpers, P
Publication Year :
2021

Abstract

BACKGROUND: Internet cognitive behavioural therapy (iCBT) is a viable delivery format of CBT for depression. However, iCBT programmes include training in a wide array of cognitive and behavioural skills via different delivery methods, and it remains unclear which of these components are more efficacious and for whom. METHODS: We did a systematic review and individual participant data component network meta-analysis (cNMA) of iCBT trials for depression. We searched PubMed, PsycINFO, Embase, and the Cochrane Library for randomised controlled trials (RCTs) published from database inception to Jan 1, 2019, that compared any form of iCBT against another or a control condition in the acute treatment of adults (aged ≥18 years) with depression. Studies with inpatients or patients with bipolar depression were excluded. We sought individual participant data from the original authors. When these data were unavailable, we used aggregate data. Two independent researchers identified the included components. The primary outcome was depression severity, expressed as incremental mean difference (iMD) in the Patient Health Questionnaire-9 (PHQ-9) scores when a component is added to a treatment. We developed a web app that estimates relative efficacies between any two combinations of components, given baseline patient characteristics. This study is registered in PROSPERO, CRD42018104683. FINDINGS: We identified 76 RCTs, including 48 trials contributing individual participant data (11 704 participants) and 28 trials with aggregate data (6474 participants). The participants' weighted mean age was 42·0 years and 12 406 (71%) of 17 521 reported were women. There was suggestive evidence that behavioural activation might be beneficial (iMD -1·83 [95% credible interval (CrI) -2·90 to -0·80]) and that relaxation might be harmful (1·20 [95% CrI 0·17 to 2·27]). Baseline severity emerged as the strongest prognostic factor for endpoint depression. Combining human and automated encouragement reduc

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1340018484
Document Type :
Electronic Resource