AI-DRIVEN INNOVATIONS IN RESPIRATORY MEDICINE: ENHANCING DIAGNOSTIC ACCURACY AND PREDICTING FUTURE RISKS

Main Article Content

Dr. Siddharth Arjun Atwal
Saurabh Mangla
Dr Aditya Hans
Dr Abanibhusan Jena

Keywords

Artificial Intelligence, Respiratory medicine, Chronic obstructive pulmonary disease COPD, asthmatic patients, Machine learning (ML)

Abstract

The use of AI in diagnosing respiratory diseases has become more prominent due to key progresses made in AI technology and its effects on diagnostics and their outcomes. The purpose of this research is to review the applicability of AI tools for COPD, asthma, and other respiratory disorders concerning diagnostics and profiling. The approach that has been adopted was a quantitative method with the analysis of the performance based on data from EHRs, patient registries, and past trials. Different learning algorithms including the kernel-based SVM, RF, deep learning algorithms including the CNNs and RNNs were built and trained. The measures of success were given by the number of true and false positives, true and false negatives, and the AUC. In the analysis of the models applied, the highest percentage of accuracy was recorded with CNN at 95% with a difference of 0% from VGG-16 and an AUC of 0. 92 concerning chest X-ray diagnosis. CNNs also attained a short-term risk prediction AUC of 0. 93, and RNNs had the best prediction of long-term risk with the AUC of 0. 90. In comparison to conventional approaches, AI models were found to be more effective in most cases, specifically, in the identification of early-stage diseases and creating risk assessment. The results are positive although the methodology faces certain difficulties like variability of data and implementation of the method into practice. This paper discusses the changes that AI has brought to respiratory medicine and shows how future developments can help overcome existing difficulties and increase the use of AI.

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