Search alternatives:
driven optimization » design optimization (Expand Search), guided optimization (Expand Search), dose optimization (Expand Search)
based optimization » whale optimization (Expand Search)
binary mapk » binary mask (Expand Search), binary image (Expand Search)
driven optimization » design optimization (Expand Search), guided optimization (Expand Search), dose optimization (Expand Search)
based optimization » whale optimization (Expand Search)
binary mapk » binary mask (Expand Search), binary image (Expand Search)
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Table 1_Association between pro-inflammatory diet and fecal incontinence: a large population-based study.pdf
Published 2025“…We also identified total saturated fat, polyunsaturated fatty acid, vitamin A, β carotene, vitamin B2, and iron are the primary dietary factors associated with FI. Based on these dietary factors, we developed a novel FI risk prediction model. …”
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Image 1_Association between pro-inflammatory diet and fecal incontinence: a large population-based study.pdf
Published 2025“…We also identified total saturated fat, polyunsaturated fatty acid, vitamin A, β carotene, vitamin B2, and iron are the primary dietary factors associated with FI. Based on these dietary factors, we developed a novel FI risk prediction model. …”
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Table 1_Multidimensional dietary assessment and interpretable machine learning models predict the risk of prediabetes/diabetes and osteoporosis comorbidity in older adults.docx
Published 2025“…An online risk prediction tool was developed based on the optimized random forest model for real-time individual comorbidity risk calculation.…”
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Data Sheet 5_Multidimensional dietary assessment and interpretable machine learning models predict the risk of prediabetes/diabetes and osteoporosis comorbidity in older adults.pdf
Published 2025“…An online risk prediction tool was developed based on the optimized random forest model for real-time individual comorbidity risk calculation.…”
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Data Sheet 7_Multidimensional dietary assessment and interpretable machine learning models predict the risk of prediabetes/diabetes and osteoporosis comorbidity in older adults.pdf
Published 2025“…An online risk prediction tool was developed based on the optimized random forest model for real-time individual comorbidity risk calculation.…”
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Data Sheet 6_Multidimensional dietary assessment and interpretable machine learning models predict the risk of prediabetes/diabetes and osteoporosis comorbidity in older adults.pdf
Published 2025“…An online risk prediction tool was developed based on the optimized random forest model for real-time individual comorbidity risk calculation.…”
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Data Sheet 3_Multidimensional dietary assessment and interpretable machine learning models predict the risk of prediabetes/diabetes and osteoporosis comorbidity in older adults.pdf
Published 2025“…An online risk prediction tool was developed based on the optimized random forest model for real-time individual comorbidity risk calculation.…”
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Data Sheet 1_Multidimensional dietary assessment and interpretable machine learning models predict the risk of prediabetes/diabetes and osteoporosis comorbidity in older adults.pdf
Published 2025“…An online risk prediction tool was developed based on the optimized random forest model for real-time individual comorbidity risk calculation.…”
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Data Sheet 2_Multidimensional dietary assessment and interpretable machine learning models predict the risk of prediabetes/diabetes and osteoporosis comorbidity in older adults.pdf
Published 2025“…An online risk prediction tool was developed based on the optimized random forest model for real-time individual comorbidity risk calculation.…”
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Data Sheet 4_Multidimensional dietary assessment and interpretable machine learning models predict the risk of prediabetes/diabetes and osteoporosis comorbidity in older adults.pdf
Published 2025“…An online risk prediction tool was developed based on the optimized random forest model for real-time individual comorbidity risk calculation.…”
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Supplementary Material for: Development of an explainable machine learning model for cardiovascular-kidney-metabolic syndrome prediction based on dietary antioxidants in a national...
Published 2025“…Explainable AI approaches such as SHAP enhance model transparency and clinical translation, supporting personalized CKM risk stratification based on dietary antioxidant patterns.…”
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Nutritional strategies in the rehabilitation of musculoskeletal injuries in athletes: a systematic integrative review - PROTOCOL
Published 2022“…The overall assessment of the risk of bias for each outcome was presented as: "low risk", "some concerns" or "high risk" of bias. …”
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The relevant code used in this study.
Published 2024“…Using CRC cases from four distinct cohorts, we built and validated a predictive model based on SARS-CoV-2 producing fructose metabolic anomalies by coupling Cox univariate regression and lasso regression feature selection algorithms to identify hallmark genes in colorectal cancer. …”
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Image_1_Evaluation of nutritional status and clinical depression classification using an explainable machine learning method.JPEG
Published 2023“…</p>Results<p>The best model achieved an accuracy of 86.18% for XGBoost and an area under the curve of 84.96% for the random forest model in original dataset and the XGBoost algorithm with an accuracy of 86.02% and an area under the curve of 85.34% in the quantile-based dataset. …”
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Image_2_Evaluation of nutritional status and clinical depression classification using an explainable machine learning method.JPEG
Published 2023“…</p>Results<p>The best model achieved an accuracy of 86.18% for XGBoost and an area under the curve of 84.96% for the random forest model in original dataset and the XGBoost algorithm with an accuracy of 86.02% and an area under the curve of 85.34% in the quantile-based dataset. …”
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Data_Sheet_1_Evaluation of nutritional status and clinical depression classification using an explainable machine learning method.docx
Published 2023“…</p>Results<p>The best model achieved an accuracy of 86.18% for XGBoost and an area under the curve of 84.96% for the random forest model in original dataset and the XGBoost algorithm with an accuracy of 86.02% and an area under the curve of 85.34% in the quantile-based dataset. …”