Abstract
The advances in the Internet and related technologies may lead to changes in professional roles of psychiatrists and psychotherapists. The application of artificial intelligence (AI) and electronic measurement-based care (eMBC) in the treatment of depressive disorder has addressed more interest. AI could play a role in population health management and patient administration as well as assist physicians to make a decision in the real-world clinical practice. The eMBC strengthens MBC through web/mobile devices and telephone consulting services, to monitor disease progression, and customizes the MBC interface in electronic medical record systems (EMRs).
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Wang, Z., Niu, Z., Yang, L., Cui, L. (2019). Internet-Based Management for Depressive Disorder. In: Fang, Y. (eds) Depressive Disorders: Mechanisms, Measurement and Management. Advances in Experimental Medicine and Biology, vol 1180. Springer, Singapore. https://doi.org/10.1007/978-981-32-9271-0_14
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DOI: https://doi.org/10.1007/978-981-32-9271-0_14
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