AI Article Synopsis

  • This article explores the use of AI for heart murmur detection in low- and medium-income countries, highlighting both its potential advantages and challenges.
  • It includes a literature review on AI's capacity to bridge healthcare disparities and discusses issues like model generalization and barriers to deployment, along with the benefits of human-centered approaches.
  • A case study in rural Brazil showcases a predictive AI model, addressing its limitations and the need for effective strategies to implement AI technologies in healthcare settings.

Article Abstract

This article includes a literature review and a case study of artificial intelligence (AI) heart murmur detection models to analyse the opportunities and challenges in deploying AI in cardiovascular healthcare in low- or medium-income countries (LMICs). This study has two parallel components: (1) The literature review assesses the capacity of AI to aid in addressing the observed disparity in healthcare between high- and low-income countries. Reasons for the limited deployment of machine learning models are discussed, as well as model generalisation. Moreover, the literature review discusses how emerging human-centred deployment research is a promising avenue for overcoming deployment barriers. (2) A predictive AI screening model is developed and tested in a case study on heart murmur detection in rural Brazil. Our binary Bayesian ResNet model leverages overlapping log mel spectrograms of patient heart sound recordings and integrates demographic data and signal features via XGBoost to optimise performance. This is followed by a discussion of the model's limitations, its robustness, and the obstacles preventing its practical application. The difficulty with which this model, and other state-of-the-art models, generalise to out-of-distribution data is also discussed. By integrating the results of the case study with those of the literature review, the NASSS framework was applied to evaluate the key challenges in deploying AI-supported heart murmur detection in low-income settings. The research accentuates the transformative potential of AI-enabled healthcare, particularly for affordable point-of-care screening systems in low-income settings. It also emphasises the necessity of effective implementation and integration strategies to guarantee the successful deployment of these technologies.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11616830PMC
http://dx.doi.org/10.1371/journal.pdig.0000437DOI Listing

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