Zakai Jana G, Alharthi Sultan A
Department of Software Engineering, College of Computer Science and Engineering, University of Jeddah, Jeddah 21959, Saudi Arabia.
Healthcare (Basel). 2025 Aug 15;13(16):2008. doi: 10.3390/healthcare13162008.
Psychological distress remains a significant public health concern, particularly among youth. With the growing integration of mobile and wearable technologies into daily life, digital phenotyping has emerged as a promising approach for early self-detection and intervention in psychological distress. The study aims to determine how behavioral and device-derived data can be used to identify early signs of emotional distress and to develop and evaluate a prototype system that enables users to self-detect these early warning signs, ultimately supporting early intervention and improved mental health outcomes. To achieve this, this study involved a multi-phase, mixed-method approach, combining literature review, system design, and user evaluation. It started with a scoping review to guide system design, followed by the design and development of a prototype system (ESFY) and a mixed-method evaluation to assess its feasibility and utility in detecting early signs of psychological distress through digital phenotyping. The results demonstrate the potential of digital phenotyping to support early self-detection for psychological distress while highlighting practical considerations for future deployment. The findings highlight the value of integrating active and passive data streams, prioritizing transparency and user empowerment, and designing adaptable systems that respond to the diverse needs and concerns of end users. The recommendations outlined in this study serve as a foundation for the continued development of scalable, trustworthy, and effective digital mental health solutions.
心理困扰仍然是一个重大的公共卫生问题,尤其是在青少年中。随着移动和可穿戴技术日益融入日常生活,数字表型分析已成为一种有前景的方法,用于心理困扰的早期自我检测和干预。本研究旨在确定行为数据和设备衍生数据如何用于识别情绪困扰的早期迹象,并开发和评估一个原型系统,使用户能够自我检测这些早期预警信号,最终支持早期干预并改善心理健康结果。为实现这一目标,本研究采用了多阶段、混合方法,结合了文献综述、系统设计和用户评估。研究首先进行了范围综述以指导系统设计,随后设计并开发了一个原型系统(ESFY),并进行了混合方法评估,以评估其通过数字表型分析检测心理困扰早期迹象的可行性和实用性。结果证明了数字表型分析在支持心理困扰早期自我检测方面的潜力,同时突出了未来部署的实际考虑因素。研究结果强调了整合主动和被动数据流、优先考虑透明度和用户赋权以及设计能够响应最终用户多样化需求和关注点的适应性系统的价值。本研究中概述的建议为可扩展、可靠且有效的数字心理健康解决方案的持续开发奠定了基础。