抑郁症监测生物传感器的最新进展--推进个性化治疗

Biosensors Pub Date : 2024-08-30 DOI:10.3390/bios14090422
Jiaju Yin, Xinyuan Jia, Haorong Li, Bingchen Zhao, Yi Yang, Tian-Ling Ren
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引用次数: 0

摘要

抑郁症是目前造成全球非正常死亡和医疗负担的一个主要因素,患者与抑郁症的斗争往往是漫长的。由于抑郁症的病因、症状和药效复杂且高度个性化,因此早期识别和个性化治疗抑郁症是提高治疗效果的关键。近年来,可穿戴电子设备、机器学习等技术的发展为实现这一目标提供了更多可能。与以往的自我评估相比,通过生物传感技术进行定期监测可以获得更全面、更客观的分析。这包括识别抑郁发作、区分躯体化症状、分析病因以及评估治疗方案的有效性。本综述总结了近期有关抑郁症生物传感技术的研究。其中特别关注了便携式或可穿戴式技术,这些技术有可能使患者在医院外长期使用。
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Recent Progress in Biosensors for Depression Monitoring—Advancing Personalized Treatment
Depression is currently a major contributor to unnatural deaths and the healthcare burden globally, and a patient’s battle with depression is often a long one. Because the causes, symptoms, and effects of medications are complex and highly individualized, early identification and personalized treatment of depression are key to improving treatment outcomes. The development of wearable electronics, machine learning, and other technologies in recent years has provided more possibilities for the realization of this goal. Conducting regular monitoring through biosensing technology allows for a more comprehensive and objective analysis than previous self-evaluations. This includes identifying depressive episodes, distinguishing somatization symptoms, analyzing etiology, and evaluating the effectiveness of treatment programs. This review summarizes recent research on biosensing technologies for depression. Special attention is given to technologies that can be portable or wearable, with the potential to enable patient use outside of the hospital, for long periods.
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