Search alternatives:
bayesian optimization » based optimization (Expand Search)
correction algorithm » detection algorithm (Expand Search), selection algorithm (Expand Search), detection algorithms (Expand Search)
learning correction » learned correction (Expand Search), learning detection (Expand Search), learning completion (Expand Search)
data learning » meta learning (Expand Search), deep learning (Expand Search), a learning (Expand Search)
task bayesian » a bayesian (Expand Search), art bayesian (Expand Search), pac bayesian (Expand Search)
binary data » primary data (Expand Search), dietary data (Expand Search)
binary task » binary mask (Expand Search)
bayesian optimization » based optimization (Expand Search)
correction algorithm » detection algorithm (Expand Search), selection algorithm (Expand Search), detection algorithms (Expand Search)
learning correction » learned correction (Expand Search), learning detection (Expand Search), learning completion (Expand Search)
data learning » meta learning (Expand Search), deep learning (Expand Search), a learning (Expand Search)
task bayesian » a bayesian (Expand Search), art bayesian (Expand Search), pac bayesian (Expand Search)
binary data » primary data (Expand Search), dietary data (Expand Search)
binary task » binary mask (Expand Search)
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Natural language processing and machine learning algorithm to identify brain MRI reports with acute ischemic stroke
Published 2019“…<div><p>Background and purpose</p><p>This project assessed performance of natural language processing (NLP) and machine learning (ML) algorithms for classification of brain MRI radiology reports into acute ischemic stroke (AIS) and non-AIS phenotypes.…”
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Variable Selection and Estimation for Misclassified Binary Responses and Multivariate Error-Prone Predictors
Published 2023“…<p>In statistical analysis or supervised learning, classification has been an attractive topic. …”
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Baseline sociodemographic and clinical data
Published 2025“…Performance was evaluated on models developed on the training data, on the same models applied to an external test set and through internal validation with three bootstrap algorithms to correct for overoptimism. …”
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Candidate predictors
Published 2025“…Performance was evaluated on models developed on the training data, on the same models applied to an external test set and through internal validation with three bootstrap algorithms to correct for overoptimism. …”
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Image1_Benchmark of Data Processing Methods and Machine Learning Models for Gut Microbiome-Based Diagnosis of Inflammatory Bowel Disease.eps
Published 2022“…We collected fifteen 16S rRNA microbiome datasets (7,707 samples) from North America to benchmark combinations of gut microbiome features, data normalization and transformation methods, batch effect correction methods, and machine learning models. …”
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Statistics in Proteomics: A Meta-analysis of 100 Proteomics Papers Published in 2019
Published 2020“…This included questions such as whether a pilot study was conducted and whether false discovery rate calculation was employed at either the quantitation or identification stage. These data were then transformed to binary inputs, analyzed via machine learning algorithms, and classified accordingly, with the aim of determining if clusters of data existed for specific journals or if certain statistical measures correlated with each other. …”
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Natural language processing for automated quantification of bone metastases reported in free-text bone scintigraphy reports
Published 2020“…Pending external validation, the NLP algorithm developed in this study may be implemented as a means to aid researchers in tackling large amounts of data.…”
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An intelligent decision-making system for embryo transfer in reproductive technology: a machine learning-based approach
Published 2025“…The aim of this study is to build Machine learning (ML) decision-support models to predict the optimal range of embryo numbers to transfer, using data from infertile couples identified through literature reviews. …”
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Data_Sheet_3_Using Serum Metabolomics to Predict Development of Anti-drug Antibodies in Multiple Sclerosis Patients Treated With IFNβ.xlsx
Published 2020“…Here we use machine learning to predict immunogenicity against IFNβ utilizing serum metabolomics data.…”
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Data_Sheet_2_Using Serum Metabolomics to Predict Development of Anti-drug Antibodies in Multiple Sclerosis Patients Treated With IFNβ.xlsx
Published 2020“…Here we use machine learning to predict immunogenicity against IFNβ utilizing serum metabolomics data.…”
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Data_Sheet_1_Using Serum Metabolomics to Predict Development of Anti-drug Antibodies in Multiple Sclerosis Patients Treated With IFNβ.xlsx
Published 2020“…Here we use machine learning to predict immunogenicity against IFNβ utilizing serum metabolomics data.…”
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Data_Sheet_4_Using Serum Metabolomics to Predict Development of Anti-drug Antibodies in Multiple Sclerosis Patients Treated With IFNβ.pdf
Published 2020“…Here we use machine learning to predict immunogenicity against IFNβ utilizing serum metabolomics data.…”
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The Value of Dynamic Grip Force Modulation as a Potential Biomarkerfor Hand Function Recovery Following Stroke
Published 2024“…</p><p dir="ltr">We used a supervised machine learning algorithm (support vector machine, SVM, with k-fold cross-validation) for binary classification of groups (stroke versus control group), task conditions (uni- versus bimanual), and to quantify the active range of motion evaluated with upper extremity Fugl-Meyer Assessment (UEFMA) within the stroke group alone.…”
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Image_1_Using Serum Metabolomics to Predict Development of Anti-drug Antibodies in Multiple Sclerosis Patients Treated With IFNβ.JPEG
Published 2020“…Here we use machine learning to predict immunogenicity against IFNβ utilizing serum metabolomics data.…”
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Image_2_Using Serum Metabolomics to Predict Development of Anti-drug Antibodies in Multiple Sclerosis Patients Treated With IFNβ.JPEG
Published 2020“…Here we use machine learning to predict immunogenicity against IFNβ utilizing serum metabolomics data.…”