3 results on '"Wang, Xinglei"'
Search Results
2. Machine Learning–Based Prediction Models for Delirium: A Systematic Review and Meta-Analysis.
- Author
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Xie, Qi, Wang, Xinglei, Pei, Juhong, Wu, Yinping, Guo, Qiang, Su, Yujie, Yan, Hui, Nan, Ruiling, Chen, Haixia, and Dou, Xinman
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DIAGNOSIS of delirium , *ONLINE information services , *MEDICAL databases , *COMPUTER software , *META-analysis , *MEDICAL information storage & retrieval systems , *SAMPLE size (Statistics) , *CONFIDENCE intervals , *SYSTEMATIC reviews , *MACHINE learning , *QUANTITATIVE research , *PREDICTION models , *MEDLINE , *RECEIVER operating characteristic curves , *SENSITIVITY & specificity (Statistics) , *GREY literature - Abstract
To critically appraise and quantify the performance studies by employing machine learning (ML) to predict delirium. A systematic review and meta-analysis. Articles reporting the use of ML to predict delirium in adult patients were included. Studies were excluded if (1) the primary goal was only the identification of various risk factors for delirium; (2) the full-text article was not found; and (3) the article was published in a language other than English/Chinese. PubMed, Embase, Cochrane Library database, Web of Science, Grey literature, and other relevant databases for the related publications were searched (from inception to December 15, 2021). The data were extracted using a standard checklist, and the risk of bias was assessed through the prediction model risk of bias assessment tool. Meta-analysis with the area under the receiver operating characteristic curve, sensitivity, and specificity as effect measures, was performed with Metadisc software. Cochran Q and I 2 statistics were used to assess the heterogeneity. Meta-regression was performed to determine the potential effect of adjustment for the key covariates. A total of 22 studies were included. Only 4 of 22 studies were quantitatively analyzed. The studies varied widely in reporting about the study participants, features and selection, handling of missing data, sample size calculations, and the intended clinical application of the model. For ML models, the overall pooled area under the receiver operating characteristic curve for predicting delirium was 0.89, sensitivity 0.85 (95% confidence interval 0.84‒0.85), and specificity 0.80 (95% confidence interval 0.81–0.80). We found that the ML model showed excellent performance in predicting delirium. This review highlights the potential shortcomings of the current approaches, including low comparability and reproducibility. Finally, we present the various recommendations on how these challenges can be effectively addressed before deploying these models in prospective analyses. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
3. The level of life space mobility among community-dwelling elderly: A systematic review and meta-analysis.
- Author
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Wang, Yingqiao, Ma, Li, Pei, Juhong, Li, Weiping, Zhou, Yihan, Dou, Xinman, and Wang, Xinglei
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ONLINE information services , *MEDICAL databases , *META-analysis , *MEDICAL information storage & retrieval systems , *CONFIDENCE intervals , *SYSTEMATIC reviews , *GERIATRIC assessment , *WORLD health , *ACTIVITIES of daily living , *POPULATION geography , *SEX distribution , *PHYSICAL mobility , *INDEPENDENT living , *DESCRIPTIVE statistics , *MEDLINE , *DATA analysis software , *OLD age - Abstract
• This study provides the latest evidence on the level of life space mobility of community elderly people. • The life space mobility of community elderly people is at a moderate level globally, with 42% of them living in a state of restricted life space. • The level of life space mobility among community elderly people gradually achieved stability after 2017. • South America, females and earlier survey years have a lower level of LSM. Multiple countries have conducted surveys on the level of life space mobility for community-dwelling elderly through the Life-Space Assessment, the results vary greatly, from 41.7 to 88.6. However, there is no meta-analysis on the current situation of community-dwelling elderly life space mobility. To systematically assess the global level of life space mobility for community-dwelling elderly, to identify potential covariates such as geographical regions, survey years, gender, and age that contribute to the heterogeneity between the studies, and to identify the dynamic trend based on survey years. Systematic review and meta-analysis. Two reviewers searched the following 8 electronic bibliographic databases from inception until May 28, 2023: PubMed, The Cochrane Library, Web of Science, Embase, Chinese Biomedical Database, China Knowledge Resource Integrated Database, WanFang, and Weipu Database. This review was conducted using the Stata 14.1 and R 4.3.1. The Cochrane's Q statistical and I2 index were used to test for heterogenicity and assess the degree of heterogenicity, respectively. Studies were appraised using the Agency for Healthcare Research and Quality tool, the Newcastle-Ottawa Scale for the quality of cross-sectional studies, cohort studies, respectively. A total of 29 studies were selected from databases and reference lists. The pooled score of Life-Space Assessment was 66.84 (95% CI: 63.30–70.39) and the prevalence of restricted life space was 42% (95% CI: 0.27–0.57). The geographical regions, survey years, gender were found to be a significant covariate of the pooled score of life space mobility estimate in the subgroup analysis. The mean score of Life-Space Assessment gradually achieved stability after 2017. The life space mobility of community-dwelling elderly in the global is at a moderate level, with 42% of them experiencing restricted life space. South America, females and earlier survey years have a lower level of life space mobility. In the future, the government should identify vulnerable groups for targeted intervention to promote the level of LSM in the community-dwelling elderly. PROSPERO [CRD42023443054]. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
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