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Machine Learning Model for Early Detection of COVID-19 by Heart Rhythm Abnormalities
Published 2023-07-01“…The work aims at creating a mathematical model based on machine learning algorithms to automate the process of detecting covid abnormalities in the heart rhythm. …”
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82
Comparing the performance of screening surveys versus predictive models in identifying patients in need of health-related social need services in the emergency department.
Published 2024-01-01“…We built an XGBoost classification algorithm using responses from the screening questionnaire to predict HRSN needs (screening questionnaire model). …”
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Efficient Design Optimization Assisted by Sequential Surrogate Models
Published 2019-01-01“…The paper proposes a global optimization algorithm employing surrogate modeling and adaptive infill criteria. …”
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85
QSAR Models for Predicting the Antioxidant Potential of Chemical Substances
Published 2025-05-01“…Different machine learning algorithms were applied to build regression models, and the goodness-of-fit of each model was assessed using the statistical parameters of R squared (R<sup>2</sup>), the Root-Mean-Squared Error, and the Mean Absolute Error. …”
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86
Predictive model establishment for forward-head posture disorder in primary-school-aged children based on multiple machine learning algorithms
Published 2025-05-01“…Multiple machine learning algorithms are applied to construct distinct risk prediction models, with the most effective model selected through comparative analysis. …”
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87
Development and validation of a risk prediction model for kinesiophobia in postoperative lung cancer patients: an interpretable machine learning algorithm study
Published 2025-06-01“…This study demonstrates that machine learning models—particularly the RF algorithm—hold substantial promise for predicting kinesiophobia in postoperative lung cancer patients. …”
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88
A diagnostic prediction model for anti-neutrophil cytoplasmic antibody associated vasculitis combined with glomerulonephritis based on machine learning algorithm
Published 2025-02-01“…<italic>EHHADH</italic>, <italic>CCL2</italic>, <italic>FN1</italic>, <italic>IL1B</italic>, <italic>VAV1</italic>, <italic>CXCR4</italic>, <italic>CCL5</italic>, and <italic>CD44</italic>were core genes in the PPI network. The RF algorithm screened out 15 characteristic genes, and the artificial neural network algorithm calculated the weight of each characteristic gene and successfully constructed a diagnostic model. …”
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A diagnostic prediction model for anti-neutrophil cytoplasmic antibody associated vasculitis combined with glomerulonephritis based on machine learning algorithm
Published 2025-02-01“…EHHADH, CCL2, FN1, IL1B, VAV1, CXCR4, CCL5, and CD44were core genes in the PPI network. The RF algorithm screened out 15 characteristic genes, and the artificial neural network algorithm calculated the weight of each characteristic gene and successfully constructed a diagnostic model. …”
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90
Genome‐scale metabolic modeling reveals SARS‐CoV‐2‐induced metabolic changes and antiviral targets
Published 2021-10-01“…Abstract Tremendous progress has been made to control the COVID‐19 pandemic caused by the SARS‐CoV‐2 virus. …”
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A cost-utility analysis of newborn screening for spinal muscular atrophy in Canada
Published 2025-08-01“…Methods A decision analytic model was developed, which combined a decision tree for the screening algorithm and a Markov model for long-term health outcomes. …”
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Unlocking The Potential of Hybrid Models for Prognostic Biomarker Discovery in Oral Cancer Survival Analysis: A Retrospective Cohort Study
Published 2024-12-01“…Concordance index (C-index), mean absolute error (MAE), mean squared error (MSE) and R-squares, were used to evaluate the performance of the models using selected features. Functional enrichment analysis was performed using DAVID database, and external validation utilized three independent datasets (GSE9844, GSE75538, GSE37991, GSE42743).Results: The findings indicated that the PSO-based method outperformed the GA-based method, achieving a smaller MAE (0.061) and MSE (0.005), R-square (0.99) and C-index (0.973), selecting 291 probes from 1069 screened. …”
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Advancing Alzheimer’s disease risk prediction: development and validation of a machine learning-based preclinical screening model in a cross-sectional study
Published 2025-02-01“…The study utilised Random Forest and Extreme Gradient Boosting (XGBoost) algorithms alongside traditional logistic regression for modelling. …”
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Fibrosis-4plus score: a novel machine learning-based tool for screening high-risk varices in compensated cirrhosis (CHESS2004): an international multicenter study
Published 2025-07-01“…Shapley Additive exPlanations method was used to interpret the model predictions. Results We analyzed data from 502 patients with compensated cirrhosis who underwent EGD screening. …”
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97
Medical laboratory data-based models: opportunities, obstacles, and solutions
Published 2025-07-01“…Abstract Medical Laboratory Data (MLD) models, which combine artificial intelligence with big medical data, have great potential in disease screening, diagnosis, personalized medicine, and health management. …”
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River floating object detection with transformer model in real time
Published 2025-03-01“…Building upon this foundation, we introduce the LR-DETR, a lightweight evolution of RT-DETR for river floating object detection. This model incorporates the High-level Screening-feature Path Aggregation Network (HS-PAN), which refines feature fusion through a novel bottom-up fusion path, significantly enhancing its expressive power. …”
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Predicting the generalization of computer aided detection (CADe) models for colonoscopy
Published 2024-11-01“…Abstract Generalizability of AI colonoscopy algorithms is important for wider adoption in clinical practice. …”
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Automatic segmentation model and machine learning model grounded in ultrasound radiomics for distinguishing between low malignant risk and intermediate-high malignant risk of adnex...
Published 2025-01-01“…Critical relevance statement The ultrasound radiomics-based machine learning model holds the potential to elevate the professional ability of less-experienced radiologists and can be used to assist in the clinical screening of ovarian cancer. …”
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