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Study Objectives: We sought to develop behavioral sleep measures from passively sensed human-smartphone interactions and retrospectively evaluate their associations with sleep disturbance, anxiety, and depressive symptoms in a large cohort of real-world patients receiving virtual behavioral medicine care.
Methods: Behavioral sleep measures from smartphone data were developed: daily longest period of smartphone inactivity (inferred sleep period [ISP]); 30-day expected period of inactivity (expected sleep period [ESP]); regularity of the daily ISP compared to the ESP (overlap percentage); and smartphone usage during inferred sleep (disruptions, wakefulness during sleep period). These measures were compared to symptoms of sleep disturbance, anxiety, and depression using linear mixed-effects modeling. More than 2300 patients receiving standard-of-care virtual mental healthcare across more than 111 000 days were retrospectively analyzed.
Results: Mean ESP duration was 8.4 h ( = 2.3), overlap percentage 75% ( = 18%) and disrupted time windows 4.85 ( = 3). There were significant associations between overlap percentage ( < 0.001) and disruptions ( < 0.001) with sleep disturbance symptoms after accounting for demographics. Overlap percentage and disruptions were similarly associated with anxiety and depression symptoms (all < 0.001).
Conclusions: Smartphone behavioral measures appear useful to longitudinally monitor sleep and benchmark depressive and anxiety symptoms in patients receiving virtual behavioral medicine care. Patterns consistent with better sleep practices (i.e. greater regularity of ISP, fewer disruptions) were associated with lower levels of reported sleep disturbances, anxiety, and depression.
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http://dx.doi.org/10.1093/sleepadvances/zpad027 | DOI Listing |
Acad Psychiatry
September 2025
University of South Carolina School of Medicine, Greenville, SC, USA.
Objective: Application review is a lengthy time commitment. The objective of this study is to retrospectively compare the list of recommended applicants as generated by two processes: (1) faculty holistic review and (2) keyword search via Thalamus Cortex, residency application management software, to see how much overlap exists between the two strategies.
Methods: Faculty at the training program completed the traditional application review performed by manual, holistic review of each eligible application, and submitted scores on their top 10-15 applicants to the program director (PD).
Front Plant Sci
August 2025
College of Software, Shanxi Agricultural University, Taigu, China.
The challenge of efficiently detecting ripe and unripe strawberries in complex environments like greenhouses, marked by dense clusters of strawberries, frequent occlusions, overlaps, and fluctuating lighting conditions, presents significant hurdles for existing detection methodologies. These methods often suffer from low efficiency, high computational expenses, and subpar accuracy in scenarios involving small and densely packed targets. To overcome these limitations, this paper introduces YOLOv11-GSF, a real-time strawberry ripeness detection algorithm based on YOLOv11, which incorporates several innovative features: a Ghost Convolution (GhostConv) convolution method for generating rich feature maps through lightweight linear transformations, thereby reducing computational overhead and enhancing resource utilization; a C3K2-SG module that combines self-moving point convolution (SMPConv) and convolutional gated linear units (CGLU) to better capture the local features of strawberry ripeness; and a F-PIoUv2 loss function inspired by Focaler IoU and PIoUv2, utilizing adaptive penalty factors and interval mapping to expedite model convergence and optimize ripeness classification.
View Article and Find Full Text PDFLung India
September 2025
Department of Pulmonary Medicine, P D Hinduja National Hospital and Medical Research Centre, Mahim, Mumbai, Maharashtra, India.
Background And Objective: There are very few studies in the Indian population on the prevalence of phenotypes in asthma patients. To phenotype patients with bronchial asthma and characterise the phenotypes based on asthma control, exacerbation frequency, and associated comorbidities.
Methods: The current cross-observational study was conducted between January 2022 and June 2022 in the department of pulmonary medicine in a tertiary care hospital.
Aging Cell
September 2025
Aging Research Center, Department of Geriatrics, Tianjin Medical University General Hospital, Tianjin Geriatrics Institute, Tianjin, China.
Metabolomics has been associated with cognitive decline and dementia, but the relationship between metabolites and brain aging remains unclear. We aimed to investigate the associations of metabolomics with brain age assessed by neuroimaging and to explore whether these relationships vary according to apolipoprotein E (APOE) ε4. This study included 17,770 chronic brain disorder-free participants aged 40-69 years from UK Biobank who underwent neuroimaging scans an average of 9 years after baseline.
View Article and Find Full Text PDFWater Res
August 2025
School of Environmental Science and Engineering, Shanghai Engineering Research Center of Solid Waste Treatment, Shanghai Jiao Tong University, Shanghai 200240, China. Electronic address:
Microplastic (MP) pollution poses a significant challenge for municipal solid waste (MSW) management, while landfills have been recognized as a primary source of secondary MPs, waste incineration offers a potential solution for MP elimination. This study discovered a kind of specifically MP-rock blends, which are generated through the melt-recrystallization of different plastics during incineration. MP-rock blend of polypropylene (PP) and polyethylene (PE) was confirmed using in-situ FTIR microscopy (LUMOS II), and three distinct morphologies, i.
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