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26191 |
Predictive modeling for compressive strength of blended cement concrete using hybrid machine learning models Enthalten in Multiscale and multidisciplinary modeling, experiments and design Bd. 8, 7.11.2024, Nr. 1, date:1.2025: 1-28
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26192 |
Predictive modeling for concrete properties under variable curing conditions using advanced machine learning approaches Enthalten in Asian journal of civil engineering Bd. 25, 17.9.2024, Nr. 8, date:12.2024: 6249-6265
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26193 |
Predictive modeling for COVID-19 readmission risk using machine learning algorithms Enthalten in BMC medical informatics and decision making Bd. 22, 20.5.2022, Nr. 1, date:12.2022: 1-12
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26194 |
Predictive modeling in pediatric traumatic brain injury using machine learning Enthalten in BMC medical research methodology Bd. 15, 17.3.2015, Nr. 1, date:12.2015: 1-9
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26195 |
Predictive modeling of ambulatory outcomes after spinal cord injury using machine learning Enthalten in Spinal cord Bd. 62, 18.6.2024, Nr. 8, date:8.2024: 446-453
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26196 |
Predictive modeling of arginine vasopressin deficiency after transsphenoidal pituitary adenoma resection by using multiple machine learning algorithms Enthalten in Scientific reports Bd. 14, 27.9.2024, Nr. 1, date:12.2024: 1-13
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26197 |
Predictive modeling of co-infection in lupus nephritis using multiple machine learning algorithms Enthalten in Scientific reports Bd. 14, 22.4.2024, Nr. 1, date:12.2024: 1-8
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26198 |
Predictive modeling of COVID-19 mortality risk in chronic kidney disease patients using multiple machine learning algorithms Enthalten in Scientific reports Bd. 14, 6.11.2024, Nr. 1, date:12.2024: 1-13
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26199 |
Predictive modeling of CsFABiCuI6-based PSC with Nd-doped ZnO as ETL using machine learning and numerical simulation Enthalten in Multiscale and multidisciplinary modeling, experiments and design Bd. 8, 26.4.2025, Nr. 6, date:6.2025: 1-23
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26200 |
Predictive modeling of diazinon residual concentration in soils contaminated with potentially toxic elements: a comparative study of machine learning approaches Enthalten in Biodegradation Bd. 36, 28.12.2024, Nr. 1, date:2.2025: 1-17
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