4.5 Article

Biological knowledge-slanted random forest approach for the classification of calcified aortic valve stenosis

Journal

BIODATA MINING
Volume 14, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s13040-021-00269-4

Keywords

Machine learning; Calcific aortic valve disease; Random Forest; Prior-knowledge; Gene-selection

Funding

  1. National Agency for Research and Development (ANID)/Scholarship Program/DOCTORADO BECAS CHILE/2019 [21190261]

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The study utilized a knowledge-slanted random forest method to identify potential genes associated with CAVS, showing improved accuracy compared to traditional RF in distinguishing between BAV and TAV cases. Moreover, the addition of prior biological information did not significantly impact the classification of BAV and TAV patients against those with normal valves, with an accuracy of 92.6%.
Background Calcific aortic valve stenosis (CAVS) is a fatal disease and there is no pharmacological treatment to prevent the progression of CAVS. This study aims to identify genes potentially implicated with CAVS in patients with congenital bicuspid aortic valve (BAV) and tricuspid aortic valve (TAV) in comparison with patients having normal valves, using a knowledge-slanted random forest (RF). Results This study implemented a knowledge-slanted random forest (RF) using information extracted from a protein-protein interactions network to rank genes in order to modify their selection probability to draw the candidate split-variables. A total of 15,191 genes were assessed in 19 valves with CAVS (BAV, n = 10; TAV, n = 9) and 8 normal valves. The performance of the model was evaluated using accuracy, sensitivity, and specificity to discriminate cases with CAVS. A comparison with conventional RF was also performed. The performance of this proposed approach reported improved accuracy in comparison with conventional RF to classify cases separately with BAV and TAV (Slanted RF: 59.3% versus 40.7%). When patients with BAV and TAV were grouped against patients with normal valves, the addition of prior biological information was not relevant with an accuracy of 92.6%. Conclusion The knowledge-slanted RF approach reflected prior biological knowledge, leading to better precision in distinguishing between cases with BAV, TAV, and normal valves. The results of this study suggest that the integration of biological knowledge can be useful during difficult classification tasks.

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