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Diagnosis of thyroid cancer using deep convolutional neural network models applied to sonographic images: a retrospective, multicohort, diagnostic study
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A systematic review shows no performance benefit of machine learning over logistic regression for clinical prediction models
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Developing specific reporting guidelines for diagnostic accuracy studies assessing AI interventions: The STARD-AI Steering Group
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The urban brain: analysing outdoor physical activity with mobile EEG
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Assessment of Clinical Complete Response After Chemoradiation for Rectal Cancer with Digital Rectal Examination, Endoscopy, and MRI: Selection for Organ-Saving Treatment
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Placental Exosomes as Early Biomarker of Preeclampsia: Potential Role of Exosomal MicroRNAs Across Gestation
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Establishing pathological cut-offs of brain atrophy rates in multiple sclerosis
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