Shaowu Lin
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Explore the profile of Shaowu Lin including associated specialties, affiliations and a list of published articles.
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10
Citations
60
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Recent Articles
1.
Zhu J, Wu Y, Lin S, Duan S, Wang X, Fang Y
J Affect Disord
. 2024 Jan;
350:590-599.
PMID: 38218258
Objective: This study aimed to utilize data-driven machine learning methods to identify and predict potential physical and cognitive function trajectory groups of older adults and determine their crucial factors for...
2.
Chen X, He L, Shi K, Wu Y, Lin S, Fang Y
Am J Prev Med
. 2023 Apr;
65(4):579-586.
PMID: 37087076
Introduction: Falls in older adults are potentially devastating, whereas an accurate fall risk prediction model for community-dwelling older Chinese is still lacking. The objective of this study was to build...
3.
Chen X, Lin S, Zheng Y, He L, Fang Y
Arch Gerontol Geriatr
. 2023 Apr;
111:105012.
PMID: 37030148
Background: Falls are the most common adverse outcome of depression in older adults, yet a accurate risk prediction model for falls stratified by distinct long-term trajectories of depressive symptoms is...
4.
Lin S, Wu Y, Fang Y
BMC Psychiatry
. 2022 Dec;
22(1):816.
PMID: 36544119
Background: Our aim was to explore whether a two-step hybrid machine learning model has the potential to discover the onset of depression in home-based older adults. Methods: Depression data (collected...
5.
Wu Y, Jia M, Xiang C, Lin S, Jiang Z, Fang Y
Psychiatry Res
. 2022 Feb;
310:114434.
PMID: 35172247
Objectives: This study aimed to explore the long-term cognitive trajectories and its' determinants, and construct prediction models for identifying high-risk populations with unfavorable cognitive trajectories. Methods: This study included 3502...
6.
Wu Y, Lin S, Shi K, Ye Z, Fang Y
Environ Sci Pollut Res Int
. 2022 Feb;
29(30):45821-45836.
PMID: 35150424
Machine learning (ML) has shown high predictive ability in environmental research. Accurate estimation of daily PM concentrations is a prerequisite to address environmental public health issues. However, studies on the...
7.
Lin S, Wu Y, He L, Fang Y
Aging Ment Health
. 2022 Feb;
27(1):8-17.
PMID: 35118924
Objectives: Our aim was to explore the possibility of using machine learning (ML) in predicting the onset and trajectories of depressive symptom in home-based older adults over a 7-year period....
8.
Lin S, Wu Y, Fang Y
Front Psychiatry
. 2022 Feb;
12:764806.
PMID: 35111085
Background: Depression is highly prevalent and considered as the most common psychiatric disorder in home-based elderly, while study on forecasting depression risk in the elderly is still limited. In an...
9.
Chen J, Lin S, Niu C, Xiao Q
Expert Rev Respir Med
. 2020 Sep;
15(2):257-265.
PMID: 32941741
Objective: To understand the clinical effectiveness and safety of Shufeng Jiedu Capsules combined with umifenovir (Arbidol) in the treatment of common-type COVID-19. Methods: A retrospective cohort study was used to...
10.
Chen J, Lin S, Zeng G, Wang W, Lin Z, Xu C, et al.
Endocr Pract
. 2020 Jan;
26(6):585-594.
PMID: 31968198
Early diagnosis and treatment of children with congenital hypothyroidism (CH) through newborn screening can effectively prevent delayed development. This study was designed to investigate the pathogenesis and factors that influence...