A machine-learning based approach to quantify fine crackles in the diagnosis of interstitial pneumonia: A proof-of-concept study.

Journal: Medicine
Published Date:

Abstract

Fine crackles are frequently heard in patients with interstitial lung diseases (ILDs) and are known as the sensitive indicator for ILDs, although the objective method for analyzing respiratory sounds including fine crackles is not clinically available. We have previously developed a machine-learning-based algorithm which can promptly analyze and quantify the respiratory sounds including fine crackles. In the present proof-of-concept study, we assessed the usefulness of fine crackles quantified by this algorithm in the diagnosis of ILDs.We evaluated the fine crackles quantitative values (FCQVs) in 60 participants who underwent high-resolution computed tomography (HRCT) and chest X-ray in our hospital. Right and left lung fields were evaluated separately.In sixty-seven lung fields with ILDs in HRCT, the mean FCQVs (0.121 ± 0.090) were significantly higher than those in the lung fields without ILDs (0.032 ± 0.023, P < .001). Among those with ILDs in HRCT, the mean FCQVs were significantly higher in those with idiopathic pulmonary fibrosis than in those with other types of ILDs (P = .002). In addition, the increased mean FCQV was associated with the presence of traction bronchiectasis (P = .003) and honeycombing (P = .004) in HRCT. Furthermore, in discriminating ILDs in HRCT, an FCQV-based determination of the presence or absence of fine crackles indicated a higher sensitivity compared to a chest X-ray-based determination of the presence or absence of ILDs.We herein report that the machine-learning-based quantification of fine crackles can predict the HRCT findings of lung fibrosis and can support the prompt and sensitive diagnosis of ILDs.

Authors

  • Yasushi Horimasu
    Department of Molecular and Internal Medicine.
  • Shinichiro Ohshimo
    Department of Emergency and Critical Care Medicine.
  • Kakuhiro Yamaguchi
    Department of Molecular and Internal Medicine.
  • Shinjiro Sakamoto
    Department of Molecular and Internal Medicine.
  • Takeshi Masuda
    Department of Molecular and Internal Medicine.
  • Taku Nakashima
    Department of Molecular and Internal Medicine.
  • Shintaro Miyamoto
    Department of Molecular and Internal Medicine.
  • Hiroshi Iwamoto
    Department of Molecular and Internal Medicine.
  • Kazunori Fujitaka
    Department of Molecular and Internal Medicine.
  • Hironobu Hamada
    Physical Analysis and Therapeutic Sciences, Graduate School of Biomedical and Health Sciences, Hiroshima University 1-2-3 Kasumi, Minami-ku, Hiroshima City, Hiroshima, Japan.
  • Takuma Sadamori
    Department of Emergency and Critical Care Medicine.
  • Nobuaki Shime
    Department of Emergency and Critical Care Medicine.
  • Noboru Hattori
    Department of Molecular and Internal Medicine.