| Literature DB >> 33786236 |
Sanket Bhattarai1, Ashish Gupta2, Eiman Ali2, Moeez Ali1, Mohamed Riad1, Prakash Adhikari1,3, Jihan A Mostafa4.
Abstract
Acute respiratory distress syndrome (ARDS) accounts for 10% of all diagnoses in the Intensive Care Unit, and about 40% of the patients succumb to the disease. Clinical methods alone can result in the under-recognition of this heterogeneous syndrome. The purpose of this study is to evaluate the role that big data and machine learning (ML) have played in understanding the heterogeneity of the disease and the development of various prediction algorithms. Most of the work in the field of ML in ARDS has been in the development of prediction models that have comparable efficacies to that of traditional models. Prediction algorithms have been useful in identifying new variables that may be important to consider in the future, supplementing the unknown information with the help of available noninvasive parameters, as well as predicting mortality. Phenotype identification using an unsupervised ML algorithm has been pivotal in classifying the heterogeneous population into more homogenous classes. Big data generated from ventilators in the form of ventilator waveform analysis and images in the form of radiomics have also been leveraged for the identification of the syndrome and can be incorporated into a clinical decision support system. Although the results are promising, lack of generalizability, "black box" nature of algorithms and concerns about "alarm fatigue" should be addressed for more mainstream adoption of these models.Entities:
Keywords: acute respiratory distress syndrome; analysis of big data; ards; artificial intelligence in medicine; big data; disease prediction; machine learning
Year: 2021 PMID: 33786236 PMCID: PMC7996475 DOI: 10.7759/cureus.13529
Source DB: PubMed Journal: Cureus ISSN: 2168-8184