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DNA-Methylation-based Classification of Paediatric Brain Tumours
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An Artificial Neural Network to model Response of a Radiotherapy Beam Monitoring System
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Fully Automated Segmentation of Left Ventricular Scar from 3D Late Gadolinium Enhancement Magnetic Resonance Imaging Using a Cascaded Multi-Planar U-Net (CMPU-Net)
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An application of machine learning in pharmacovigilance: estimating likely patient genotype from phenotypical manifestations of fluoropyrimidine toxicity
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Oxytocin effects on the resting-state mentalizing brain network
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A review of thyroid gland segmentation and thyroid nodule segmentation methods for medical ultrasound images
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Computational approaches for detection of cardiac rhythm abnormalities: Are we there yet?
Zhang, Aleexenko, Jeevaratnam
J Electrocardiol (2019) 59, 28-34
Prediction of peptide binding to MHC using machine learning with sequence and structure-based feature sets
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From Summary Statistics to Gene Trees: Methods for Inferring Positive Selection
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Retraining an open-source pneumothorax detecting machine learning algorithm for improved performance to medical images
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Clin Imaging (2020) 61, 15-19
Automated Parkinson's disease recognition based on statistical pooling method using acoustic features
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Denoising arterial spin labeling perfusion MRI with deep machine learning
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Magn Reson Imaging (2020)
Predictive Modeling for Metabolomics Data
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Development and validation of machine learning models to predict gastrointestinal leak and venous thromboembolism after weight loss surgery: an analysis of the MBSAQIP database
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Surg Endosc (2020)
Monitoring canid scent marking in space and time using a biologging and machine learning approach
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Machine learning can identify newly diagnosed patients with CLL at high risk of infection
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Application of machine learning to predict monomer retention of therapeutic proteins after long term storage
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Int J Pharm (2020)
Dynamic readmission prediction using routine postoperative laboratory results after radical cystectomy
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Urol. Oncol. (2020)