利用移动传感器数据预测精神分裂症复发:常规聚类分析。

AME medical journal Pub Date : 2022-04-11 DOI:10.2196/31006
Joanne Zhou, Bishal Lamichhane, Dror Ben-Zeev, Andrew Campbell, Akane Sano
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引用次数: 0

摘要

背景:从移动传感数据中获得的行为表征有助于预测精神分裂症患者即将复发的精神疾病,并及时采取干预措施以减少复发:在本研究中,我们旨在开发聚类模型,以便从连续多模态移动感知数据中获取行为表征,用于复发预测任务。确定的聚类可以代表与患者日常生活相关的不同常规行为趋势,以及与即将复发相关的非典型行为趋势:我们使用从 CrossCheck 项目中获得的移动传感数据进行分析。聚类模型和复发预测评估使用了从 63 名精神分裂症患者处获得的六种不同移动传感模式(环境光、声音、对话、加速度等)的连续数据,每种模式的监测时间长达一年。两种聚类模型,即高斯混合物模型(GMM)和中间值周围分区(PAM),用于从移动传感数据中获取行为表征。这些模型对移动传感数据所代表的行为之间的相似性有不同的概念,因此能提供不同的行为特征。从聚类模型中获得的特征用于使用平衡随机森林训练和评估个性化复发预测模型。个性化是根据由年龄相仿的其他患者组成的个性化子集,为特定患者确定最佳特征:使用 GMM 和 PAM 模型识别出的群组代表了不同的行为模式(如代表久坐、活跃但交流少的群组等)。虽然基于 GMM 的模型能更好地表征常规行为,发现了集群分布较小的密集集群,但其他一些识别出的集群的集群分布较大,这可能表明行为表征存在异质性。另一方面,基于 PAM 模型的聚类具有较低的聚类扩散变异性,这表明所获得的聚类具有更多的同质性行为特征。从聚类模型中获得的行为表现特征在复发期附近有显著变化。基于聚类模型的特征与其他移动传感数据特征相结合,在 "只留一个病人 "的评估设置中,复发预测任务的 F2 得分为 0.23。获得的 F2 得分明显高于随机分类基线的平均 F2 得分 0.042:移动传感可以利用不同的传感模式捕捉行为趋势。对日常移动传感数据进行聚类有助于发现常规和非典型行为趋势。在这项研究中,我们使用了基于 GMM 和 PAM 的聚类模型来获取精神分裂症患者的行为趋势。研究发现,聚类模型得出的特征对检测即将到来的精神病复发具有预测作用。这种复发预测模型有助于进行及时干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Psychotic Relapse in Schizophrenia With Mobile Sensor Data: Routine Cluster Analysis.

Background: Behavioral representations obtained from mobile sensing data can be helpful for the prediction of an oncoming psychotic relapse in patients with schizophrenia and the delivery of timely interventions to mitigate such relapse.

Objective: In this study, we aim to develop clustering models to obtain behavioral representations from continuous multimodal mobile sensing data for relapse prediction tasks. The identified clusters can represent different routine behavioral trends related to daily living of patients and atypical behavioral trends associated with impending relapse.

Methods: We used the mobile sensing data obtained from the CrossCheck project for our analysis. Continuous data from six different mobile sensing-based modalities (ambient light, sound, conversation, acceleration, etc) obtained from 63 patients with schizophrenia, each monitored for up to a year, were used for the clustering models and relapse prediction evaluation. Two clustering models, Gaussian mixture model (GMM) and partition around medoids (PAM), were used to obtain behavioral representations from the mobile sensing data. These models have different notions of similarity between behaviors as represented by the mobile sensing data, and thus, provide different behavioral characterizations. The features obtained from the clustering models were used to train and evaluate a personalized relapse prediction model using balanced random forest. The personalization was performed by identifying optimal features for a given patient based on a personalization subset consisting of other patients of similar age.

Results: The clusters identified using the GMM and PAM models were found to represent different behavioral patterns (such as clusters representing sedentary days, active days but with low communication, etc). Although GMM-based models better characterized routine behaviors by discovering dense clusters with low cluster spread, some other identified clusters had a larger cluster spread, likely indicating heterogeneous behavioral characterizations. On the other hand, PAM model-based clusters had lower variability of cluster spread, indicating more homogeneous behavioral characterization in the obtained clusters. Significant changes near the relapse periods were observed in the obtained behavioral representation features from the clustering models. The clustering model-based features, together with other features characterizing the mobile sensing data, resulted in an F2 score of 0.23 for the relapse prediction task in a leave-one-patient-out evaluation setting. The obtained F2 score was significantly higher than that of a random classification baseline with an average F2 score of 0.042.

Conclusions: Mobile sensing can capture behavioral trends using different sensing modalities. Clustering of the daily mobile sensing data may help discover routine and atypical behavioral trends. In this study, we used GMM-based and PAM-based cluster models to obtain behavioral trends in patients with schizophrenia. The features derived from the cluster models were found to be predictive for detecting an oncoming psychotic relapse. Such relapse prediction models can be helpful in enabling timely interventions.

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