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. 2023 Feb 24;10:1127716. doi: 10.3389/fcvm.2023.1127716

Table 4.

Summary of publications describing artificial intelligence application in guiding mechanical circulatory support practice.

Author Title Data source used Primary outcome Best model performance Study conclusion
Aras (36) InDetector – Automatic detection of infected driveline regions Local institutional data – University of Arizona, United states Diagnosis of LVAD driveline infections The convolution neural network with image augmentation had 93.75% accuracy. InDetector, a smartphone-based application, allows at-home patients to send images of their driveline to a remote server which used an AI model to classify the driveline region as clean or infected.
Maw (37) Development of a suction detection algorithm from patient pump data Local Institutional Data, Medical University of Vienna Detection of HVAD suction events The supervised learning algorithm had 92.5% sensitivity and 100% specificity. The proposed algorithm for suction detection may be used as diagnostic marker, or as a component of an automatic physiologic controller in patients with HVAD pumps.
Topkara (38) Machine learning-based prediction of myocardial recovery in patients with left ventricular assist device support INTERMACS, 2008–2017 LVAD explant specifically due to myocardial recovery Bayesian logistic regression model achieved the highest AUC of 0.824. Machine learning can be a valuable tool to identify subsets of LVAD patients who may be more likely to respond to myocardial recovery protocols.

HVAD, heartware ventricular assist device. LVAD, left ventricular assist device. INTERMACS, Interagency Registry for Mechanically Assisted Circulatory Support. Inline graphic strong recommendation, Inline graphic weak recommendation/promising but not ready to implement, as suggested by the respective paper.