| Literature DB >> 31111459 |
J W Benjamins1, K van Leeuwen2, L Hofstra3,4, M Rienstra1, Y Appelman4, W Nijhof5, B Verlaat6, I Everts2, H M den Ruijter7, I Isgum7, T Leiner7, R Vliegenthart8, F W Asselbergs7,9,10,11, L E Juarez-Orozco1,12, P van der Harst13,14,15.
Abstract
BACKGROUND: Machine learning (ML) allows the exploration and progressive improvement of very complex high-dimensional data patterns that can be utilised to optimise specific classification and prediction tasks, outperforming traditional statistical approaches. An enormous acceleration of ready-to-use tools and artificial intelligence (AI) applications, shaped by the emergence, refinement, and application of powerful ML algorithms in several areas of knowledge, is ongoing. Although such progress has begun to permeate the medical sciences and clinical medicine, implementation in cardiovascular medicine and research is still in its infancy.Entities:
Keywords: Artificial intelligence; CVON-AI consortium; Cardiovascular disease; Machine learning
Year: 2019 PMID: 31111459 PMCID: PMC6712143 DOI: 10.1007/s12471-019-1281-y
Source DB: PubMed Journal: Neth Heart J ISSN: 1568-5888 Impact factor: 2.380
Fig. 1Cloud platform architecture
Fig. 2a Implemented U‑Net inspired neural network architecture. For each layer of the network, the height of a block represents width and height in pixels of the input and output images, and the size of data in memory in each of the model’s layers. The width of each block represents the depth, or the number of parallel filters through which data pass in each layer of the network. Act type of activation function; ReLu rectified linear unit, or rectifier, an activation that outputs zero for inputs less than zero and outputs that equal their input for inputs greater than or equal to zero. b Left ventricular ejection fraction (LVEF) determined from the contours predicted by the U‑Net model compared to the LVEF derived from manual annotations
Fig. 3Model-backed demo web application with segmentations on a limited set of magnetic resonance images from the GIPS-III study. LVC volume of the left ventricular cavity, RVC volume of the right ventricular cavity, LVM mass of the left ventricular tissue, calculated from the left ventricular contours at each consecutive frame