AI Article Synopsis

  • Pulmonary auscultation is important for detecting lung issues, but its effectiveness can vary based on the person performing it; machine learning (ML) models can automate the classification of lung sounds as a potential solution.
  • This systematic review analyzed 62 studies from 1990 to 2022, examining the accuracy and data sources of existing ML models used for lung sound classification, with results showing varied accuracy rates.
  • Despite the promise of ML in classifying lung sounds using public databases, many studies had a high risk of bias, highlighting the need for standardized methods in data collection and reporting to improve reliability.

Article Abstract

Pulmonary auscultation is essential for detecting abnormal lung sounds during physical assessments, but its reliability depends on the operator. Machine learning (ML) models offer an alternative by automatically classifying lung sounds. ML models require substantial data, and public databases aim to address this limitation. This systematic review compares characteristics, diagnostic accuracy, concerns, and data sources of existing models in the literature. Papers published from five major databases between 1990 and 2022 were assessed. Quality assessment was accomplished with a modified QUADAS-2 tool. The review encompassed 62 studies utilizing ML models and public-access databases for lung sound classification. Artificial neural networks (ANN) and support vector machines (SVM) were frequently employed in the ML classifiers. The accuracy ranged from 49.43% to 100% for discriminating abnormal sound types and 69.40% to 99.62% for disease class classification. Seventeen public databases were identified, with the ICBHI 2017 database being the most used (66%). The majority of studies exhibited a high risk of bias and concerns related to patient selection and reference standards. Summarizing, ML models can effectively classify abnormal lung sounds using publicly available data sources. Nevertheless, inconsistent reporting and methodologies pose limitations to advancing the field, and therefore, public databases should adhere to standardized recording and labeling procedures.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10604310PMC
http://dx.doi.org/10.3390/bioengineering10101155DOI Listing

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