Last Update Date: Oct 11, 2019
- Machine Learning Goes Mainstream: PLOS Medicine 15th Anniversary
PLOS Blogs, October 8, 2019 - Wearable technology and lifestyle management: the fight against obesity and diabetes
The Lancet Digital Health, Vol 1, Iss 6, Pe 243, October 1, 2019 - A Theoretical Framework for Clinical Implementation of Social Determinants of Health.
Hammond Gmerice et al. JAMA cardiology 2019 Oct - Harnessing data and technology for public health: five challenges
- Medical device surveillance with electronic health records.
Callahan Alison et al. NPJ digital medicine 2019 294 - Use of Non-invasive Parameters and Machine-Learning Algorithms for Predicting Future Risk of Type 2 Diabetes: A Retrospective Cohort Study of Health Data From Kuwait.
Farran Bassam et al. Frontiers in endocrinology 2019 10624 - Differentiating Noninvasive Follicular Thyroid Neoplasm with Papillary-Like Nuclear Features from Classic Papillary Thyroid Carcinoma: Analysis of Cytomorphologic Descriptions Using a Novel Machine-Learning Approach.
Maleki Sara et al. Journal of pathology informatics 2019 1029 - Towards scaling Twitter for digital epidemiology of birth defects.
Klein Ari Z et al. NPJ digital medicine 2019 296 - KETOS: Clinical decision support and machine learning as a service - A training and deployment platform based on Docker, OMOP-CDM, and FHIR Web Services.
Gruendner Julian et al. PloS one 2019 14(10) e0223010 - Can machine learning improve patient selection for cardiac resynchronization therapy?
Hu Szu-Yeu et al. PloS one 2019 14(10) e0222397 - Ethics of Artificial Intelligence in Radiology: Summary of the Joint European and North American Multisociety Statement.
Geis J Raymond et al. Canadian Association of Radiologists journal = Journal l'Association canadienne des radiologistes 2019 Oct - Ethics of artificial intelligence in radiology: summary of the joint European and North American multisociety statement.
Geis J Raymond et al. Insights into imaging 2019 Oct 10(1) 101 - Ethics of Artificial Intelligence in Radiology: Summary of the Joint European and North American Multisociety Statement.
Geis J Raymond et al. Radiology 2019 191586 - Insights into Amyotrophic Lateral Sclerosis from a Machine Learning Perspective.
Gordon Jonathan et al. Journal of clinical medicine 2019 Oct 8(10) - Use of Patient-Reported Data to Match Depression Screening Intervals With Depression Risk Profiles in Primary Care Patients With Diabetes: Development and Validation of Prediction Models for Major Depression.
Jin Haomiao et al. JMIR formative research 2019 Oct 3(4) e13610 - Machine Learning in Epidemiology and Health Outcomes Research.
Wiemken Timothy L et al. Annual review of public health 2019 Oct - Predicting emergency department orders with multilabel machine learning techniques and simulating effects on length of stay.
Hunter-Zinck Haley S et al. Journal of the American Medical Informatics Association : JAMIA 2019 Oct - Mining social media for prescription medication abuse monitoring: a review and proposal for a data-centric framework.
Sarker Abeed et al. Journal of the American Medical Informatics Association : JAMIA 2019 Oct - 2018 n2c2 shared task on adverse drug events and medication extraction in electronic health records.
Henry Sam et al. Journal of the American Medical Informatics Association : JAMIA 2019 Oct - Convolutional Neural Network for Differentiating Gastric Cancer from Gastritis Using Magnified Endoscopy with Narrow Band Imaging.
Horiuchi Yusuke et al. Digestive diseases and sciences 2019 Oct
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