Digital phenotyping data and anomaly detection methods to assess changes in mood and anxiety symptoms across a transdiagnostic clinical sample.

IF 5.3 2区 医学 Q1 PSYCHIATRY
Asher Cohen, John Naslund, Erlend Lane, Anant Bhan, Abhijit Rozatkar, Urvakhsh Meherwan Mehta, Aditya Vaidyam, Andrew Jin Soo Byun, Ian Barnett, John Torous
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引用次数: 0

Abstract

Introduction: Clinical assessment of mood and anxiety change often relies on clinical assessment or self-reported scales. Using smartphone digital phenotyping data and resulting markers of behavior (e.g., sleep) to augment clinical symptom scores offers a scalable and potentially more valid method to understand changes in patients' state. This paper explores the potential of using a combination of active and passive sensors in the context of smartphone-based digital phenotyping to assess mood and anxiety changes in two distinct cohorts of patients to assess the preliminary reliability and validity of this digital phenotyping method.

Methods: Participants from two different cohorts, each n = 76, one with diagnoses of depression/anxiety and the other schizophrenia, utilized mindLAMP to collect active data (e.g., surveys on mood/anxiety), along with passive data consisting of smartphone digital phenotyping data (geolocation, accelerometer, and screen state) for at least 1 month. Using anomaly detection algorithms, we assessed if statistical anomalies in the combination of active and passive data could predict changes in mood/anxiety scores as measured via smartphone surveys.

Results: The anomaly detection model was reliably able to predict symptom change of 4 points or greater for depression as measured by the PHQ-9 and anxiety as measured for the GAD-8 for both patient populations, with an area under the ROC curve of 0.65 and 0.80 for each respectively. For both PHQ-9 and GAD-7, these AUCs were maintained when predicting significant symptom change at least 7 days in advance. Active data alone predicted around 52% and 75% of the symptom variability for the depression/anxiety and schizophrenia populations respectively.

Conclusion: These results indicate the feasibility of anomaly detection for predicting symptom change in transdiagnostic cohorts. These results across different patient groups, different countries, and different sites (India and the US) suggest anomaly detection of smartphone digital phenotyping data may offer a reliable and valid approach to predicting symptom change. Future work should emphasize prospective application of these statistical methods.

通过数字表型数据和异常检测方法,评估跨诊断临床样本中情绪和焦虑症状的变化。
简介情绪和焦虑变化的临床评估通常依赖于临床评估或自我报告量表。使用智能手机数字表型数据和由此产生的行为标记(如睡眠)来增强临床症状评分,为了解患者状态的变化提供了一种可扩展且更有效的方法。本文探讨了在基于智能手机的数字表型中结合使用主动和被动传感器来评估两组不同患者的情绪和焦虑变化的潜力,以评估这种数字表型方法的初步可靠性和有效性:来自两个不同组群的参与者(每个组群的人数均为76人,其中一个组群被诊断为抑郁/焦虑,另一个组群被诊断为精神分裂症)利用mindLAMP收集主动数据(如情绪/焦虑调查)以及由智能手机数字表型数据(地理位置、加速计和屏幕状态)组成的被动数据,时间至少为1个月。利用异常检测算法,我们评估了主动数据和被动数据组合中的统计异常是否能预测智能手机调查所测得的情绪/焦虑分数的变化:异常检测模型能够可靠地预测两个患者群体中 PHQ-9 测量的抑郁和 GAD-8 测量的焦虑的症状变化达到或超过 4 分,两者的 ROC 曲线下面积分别为 0.65 和 0.80。对于 PHQ-9 和 GAD-7,在预测至少 7 天前的显著症状变化时,这些 AUC 值都能保持不变。在抑郁/焦虑和精神分裂症人群中,仅活性数据就分别预测了约 52% 和 75% 的症状变化:这些结果表明了异常检测在跨诊断队列中预测症状变化的可行性。这些横跨不同患者群体、不同国家和不同地点(印度和美国)的结果表明,智能手机数字表型数据的异常检测可能是预测症状变化的一种可靠有效的方法。未来的工作应强调这些统计方法的前瞻性应用。
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来源期刊
Acta Psychiatrica Scandinavica
Acta Psychiatrica Scandinavica 医学-精神病学
CiteScore
11.20
自引率
3.00%
发文量
135
审稿时长
6-12 weeks
期刊介绍: Acta Psychiatrica Scandinavica acts as an international forum for the dissemination of information advancing the science and practice of psychiatry. In particular we focus on communicating frontline research to clinical psychiatrists and psychiatric researchers. Acta Psychiatrica Scandinavica has traditionally been and remains a journal focusing predominantly on clinical psychiatry, but translational psychiatry is a topic of growing importance to our readers. Therefore, the journal welcomes submission of manuscripts based on both clinical- and more translational (e.g. preclinical and epidemiological) research. When preparing manuscripts based on translational studies for submission to Acta Psychiatrica Scandinavica, the authors should place emphasis on the clinical significance of the research question and the findings. Manuscripts based solely on preclinical research (e.g. animal models) are normally not considered for publication in the Journal.
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