| Literature DB >> 34777042 |
Jihui Lee1, Nili Solomonov2, Samprit Banerjee1, George S Alexopoulos2, Jo Anne Sirey2.
Abstract
Late-life depression is heterogenous and patients vary in disease course over time. Most psychotherapy studies measure activity levels and symptoms solely using self-report scales, administered periodically. These scales may not capture granular changes during treatment. We introduce the potential utility of passive sensing data collected with smartphone to assess fluctuations in daily functioning in real time during psychotherapy for late life depression in elder abuse victims. To our knowledge, this is the first investigation of passive sensing among depressed elder abuse victims. We present data from three victims who received a 9-week intervention as part of a pilot randomized controlled trial and showed a significant decrease in depressive symptoms (50% reduction). Using a smartphone, we tracked participants' daily number of smartphone unlocks, time spent at home, time spent in conversation, and step count over treatment. Independent assessment of depressive symptoms and behavioral activation were collected at intake, Weeks 6 and 9. Data revealed patient-level fluctuations in activity level over treatment, corresponding with self-reported behavioral activation. We demonstrate how passive sensing data could expand our understanding of heterogenous presentations of late-life depression among elder abuse. We illustrate how trajectories of change in activity levels as measured with passive sensing and subjective measures can be tracked concurrently over time. We outline challenges and potential solutions for application of passive sensing data collection in future studies with larger samples using novel advanced statistical modeling, such as artificial intelligence algorithms.Entities:
Keywords: depression; late life; mobile health; passive sensing; psychotherapy
Year: 2021 PMID: 34777042 PMCID: PMC8580874 DOI: 10.3389/fpsyt.2021.732773
Source DB: PubMed Journal: Front Psychiatry ISSN: 1664-0640 Impact factor: 4.157
Demographic and clinical characteristics of the sample.
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| Treatment group | PROTECT | PROTECT | Referral | |
| Age (years) | 62 | 65 | 69 | |
| Gender | Male | Female | Female | |
| Marital status | Separated | Divorced | Married | |
| Living situation | Lives with Others | Lives Alone | Lives with Others | |
| Ethnicity | Non-Hispanic | Hispanic | Non-Hispanic | |
| Race | African American | White | African American | |
| Religion | Other | Catholic | Catholic | |
| Education (years) | 14 | 12 | 14 | |
| Financial situation | Perception of financial status | Has just enough | Has just enough | Has just enough |
| Annual Income | <9K | 13K−16K | 13K−16K | |
| Abuse | Financial | Y | ||
| Verbal / Emotional | Y | Y | ||
| Physical | Y | Y | Y | |
Figure 1Passive sensing data fluctuations over treatment. BADS, Behavioral Activation for Depression Scale. Columns represent patients and rows represent different smartphone data (step count, time spent at home, time in conversation, and the number of screen unlocks). For all panels, the x-axis shows time in days. Points in black represent daily recorded smartphone data and a blue line with a shaded band is a smooth local polynomial regression (LOESS) curve with its 95% confidence interval. Points and a dashed line in red show the fluctuations in BADS scores from baseline, weeks 6 to 9 (end of treatment).