Is Artificial Intelligence the Next Co-Pilot for Primary Care in Diagnosing and Recommending Treatments for Depression?

Q1 Medicine
Inbar Levkovich
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Abstract

Depression poses significant challenges to global healthcare systems and impacts the quality of life of individuals and their family members. Recent advancements in artificial intelligence (AI) have had a transformative impact on the diagnosis and treatment of depression. These innovations have the potential to significantly enhance clinical decision-making processes and improve patient outcomes in healthcare settings. AI-powered tools can analyze extensive patient data-including medical records, genetic information, and behavioral patterns-to identify early warning signs of depression, thereby enhancing diagnostic accuracy. By recognizing subtle indicators that traditional assessments may overlook, these tools enable healthcare providers to make timely and precise diagnostic decisions that are crucial in preventing the onset or escalation of depressive episodes. In terms of treatment, AI algorithms can assist in personalizing therapeutic interventions by predicting the effectiveness of various approaches for individual patients based on their unique characteristics and medical history. This includes recommending tailored treatment plans that consider the patient's specific symptoms. Such personalized strategies aim to optimize therapeutic outcomes and improve the overall efficiency of healthcare. This theoretical review uniquely synthesizes current evidence on AI applications in primary care depression management, offering a comprehensive analysis of both diagnostic and treatment personalization capabilities. Alongside these advancements, we also address the conflicting findings in the field and the presence of biases that necessitate important limitations.

人工智能是初级保健诊断和推荐抑郁症治疗的下一个辅助试点吗?
抑郁症对全球医疗保健系统构成重大挑战,并影响个人及其家庭成员的生活质量。人工智能(AI)的最新进展对抑郁症的诊断和治疗产生了变革性的影响。这些创新有可能显著增强临床决策过程,并改善医疗保健环境中的患者结果。人工智能驱动的工具可以分析大量的患者数据,包括医疗记录、遗传信息和行为模式,以识别抑郁症的早期预警信号,从而提高诊断的准确性。通过识别传统评估可能忽略的细微指标,这些工具使医疗保健提供者能够做出及时准确的诊断决策,这对于预防抑郁症发作或升级至关重要。在治疗方面,人工智能算法可以根据患者的独特特征和病史,预测各种方法对个体患者的有效性,从而帮助个性化治疗干预。这包括根据患者的具体症状推荐量身定制的治疗方案。这种个性化策略旨在优化治疗结果,提高医疗保健的整体效率。这篇理论综述独特地综合了人工智能在初级保健抑郁症管理中的应用的现有证据,提供了诊断和治疗个性化能力的全面分析。除了这些进步,我们还解决了该领域中相互矛盾的发现以及需要重要限制的偏见的存在。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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