Learning machines in Internet-delivered psychological treatment

被引:0
作者
Magnus Boman
Fehmi Ben Abdesslem
Erik Forsell
Daniel Gillblad
Olof Görnerup
Nils Isacsson
Magnus Sahlgren
Viktor Kaldo
机构
[1] KTH/EECS/SCS/MCS,Department of Clinical Neuroscience, Centre for Psychiatry Research
[2] RISE,Department of Psychology, Faculty of Health and Life Sciences
[3] Karolinska Institutet and Stockholm Health Care Services,undefined
[4] Linnaeus University,undefined
来源
Progress in Artificial Intelligence | 2019年 / 8卷
关键词
Learning machine; Machine learning; Ensemble learning; Gating network; Internet-based psychological treatment;
D O I
暂无
中图分类号
学科分类号
摘要
A learning machine, in the form of a gating network that governs a finite number of different machine learning methods, is described at the conceptual level with examples of concrete prediction subtasks. A historical data set with data from over 5000 patients in Internet-based psychological treatment will be used to equip healthcare staff with decision support for questions pertaining to ongoing and future cases in clinical care for depression, social anxiety, and panic disorder. The organizational knowledge graph is used to inform the weight adjustment of the gating network and for routing subtasks to the different methods employed locally for prediction. The result is an operational model for assisting therapists in their clinical work, about to be subjected to validation in a clinical trial.
引用
收藏
页码:475 / 485
页数:10
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