Search alternatives:
cohort optimization » cost optimization (Expand Search), joint optimization (Expand Search), robust optimization (Expand Search)
codon optimization » wolf optimization (Expand Search)
lines based » lens based (Expand Search), genes based (Expand Search), lines used (Expand Search)
binary b » binary _ (Expand Search)
b codon » _ codon (Expand Search), b common (Expand Search)
cohort optimization » cost optimization (Expand Search), joint optimization (Expand Search), robust optimization (Expand Search)
codon optimization » wolf optimization (Expand Search)
lines based » lens based (Expand Search), genes based (Expand Search), lines used (Expand Search)
binary b » binary _ (Expand Search)
b codon » _ codon (Expand Search), b common (Expand Search)
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Dual UHPLC-HRMS Metabolomics and Lipidomics and Automated Data Processing Workflow for Comprehensive High-Throughput Gut Phenotyping
Published 2023“…The latter was benchmarked toward vendor-specific targeted and untargeted software and our isotopologue parameter optimization/XCMS-based untargeted pipeline in LifeLines Deep cohort samples (<i>n</i> = 97). …”
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DataSheet2_Concordance of the treatment patterns for major depressive disorders between the Canadian Network for Mood and Anxiety Treatments (CANMAT) algorithm and real-world pract...
Published 2022“…</p><p>Conclusion: Gap existed between clinical practice and AD algorithm. Improved access to evidence-based treatment is required, especially for optimized strategies during outpatient follow-up.…”
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DataSheet1_Concordance of the treatment patterns for major depressive disorders between the Canadian Network for Mood and Anxiety Treatments (CANMAT) algorithm and real-world pract...
Published 2022“…</p><p>Conclusion: Gap existed between clinical practice and AD algorithm. Improved access to evidence-based treatment is required, especially for optimized strategies during outpatient follow-up.…”
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Methodology block diagram.
Published 2025“…Six machine learning algorithms - Random Forest (RF), AdaBoost, Light Gradient Boosting Machine (LightGBM), eXtreme Gradient Boosting (XGBoost), Categorical Boosting (CatBoost), and Tabular Prior-data Fitted Network version 2.0 (TabPFN-V2) - were implemented with five-fold cross-validation to optimize model hyperparameters. …”
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Table_4_Computed Tomography Imaging-Based Radiogenomics Analysis Reveals Hypoxia Patterns and Immunological Characteristics in Ovarian Cancer.xlsx
Published 2022“…Finally, optimal radiogenomics biomarkers for predicting the risk status of patients were developed by machine learning algorithms.…”
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Image_2_Computed Tomography Imaging-Based Radiogenomics Analysis Reveals Hypoxia Patterns and Immunological Characteristics in Ovarian Cancer.tiff
Published 2022“…Finally, optimal radiogenomics biomarkers for predicting the risk status of patients were developed by machine learning algorithms.…”
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Table_2_Computed Tomography Imaging-Based Radiogenomics Analysis Reveals Hypoxia Patterns and Immunological Characteristics in Ovarian Cancer.xlsx
Published 2022“…Finally, optimal radiogenomics biomarkers for predicting the risk status of patients were developed by machine learning algorithms.…”
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Image_1_Computed Tomography Imaging-Based Radiogenomics Analysis Reveals Hypoxia Patterns and Immunological Characteristics in Ovarian Cancer.tiff
Published 2022“…Finally, optimal radiogenomics biomarkers for predicting the risk status of patients were developed by machine learning algorithms.…”
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Image_4_Computed Tomography Imaging-Based Radiogenomics Analysis Reveals Hypoxia Patterns and Immunological Characteristics in Ovarian Cancer.tiff
Published 2022“…Finally, optimal radiogenomics biomarkers for predicting the risk status of patients were developed by machine learning algorithms.…”
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Table_1_Computed Tomography Imaging-Based Radiogenomics Analysis Reveals Hypoxia Patterns and Immunological Characteristics in Ovarian Cancer.xlsx
Published 2022“…Finally, optimal radiogenomics biomarkers for predicting the risk status of patients were developed by machine learning algorithms.…”
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Image_3_Computed Tomography Imaging-Based Radiogenomics Analysis Reveals Hypoxia Patterns and Immunological Characteristics in Ovarian Cancer.tiff
Published 2022“…Finally, optimal radiogenomics biomarkers for predicting the risk status of patients were developed by machine learning algorithms.…”
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Table_3_Computed Tomography Imaging-Based Radiogenomics Analysis Reveals Hypoxia Patterns and Immunological Characteristics in Ovarian Cancer.xlsx
Published 2022“…Finally, optimal radiogenomics biomarkers for predicting the risk status of patients were developed by machine learning algorithms.…”