A 178-clinical-center experiment of integrating AI solutions for lung pathology diagnosis

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  • Ibragimov, Bulat
  • Kirill Arzamasov
  • Bulat Maksudov
  • Semen Kiselev
  • Alexander Mongolin
  • Tamerlan Mustafaev
  • Dilyara Ibragimova
  • Ksenia Evteeva
  • Anna Andreychenko
  • Sergey Morozov

In 2020, an experiment testing AI solutions for lung X-ray analysis on a multi-hospital network was conducted. The multi-hospital network linked 178 Moscow state healthcare centers, where all chest X-rays from the network were redirected to a research facility, analyzed with AI, and returned to the centers. The experiment was formulated as a public competition with monetary awards for participating industrial and research teams. The task was to perform the binary detection of abnormalities from chest X-rays. For the objective real-life evaluation, no training X-rays were provided to the participants. This paper presents one of the top-performing AI frameworks from this experiment. First, the framework used two EfficientNets, histograms of gradients, Haar feature ensembles, and local binary patterns to recognize whether an input image represents an acceptable lung X-ray sample, meaning the X-ray is not grayscale inverted, is a frontal chest X-ray, and completely captures both lung fields. Second, the framework extracted the region with lung fields and then passed them to a multi-head DenseNet, where the heads recognized the patient’s gender, age and the potential presence of abnormalities, and generated the heatmap with the abnormality regions highlighted. During one month of the experiment from 11.23.2020 to 12.25.2020, 17,888 cases have been analyzed by the framework with 11,902 cases having radiological reports with the reference diagnoses that were unequivocally parsed by the experiment organizers. The performance measured in terms of the area under receiving operator curve (AUC) was 0.77. The AUC for individual diseases ranged from 0.55 for herniation to 0.90 for pneumothorax.

OriginalsprogEngelsk
Artikelnummer1135
TidsskriftScientific Reports
Vol/bind13
Udgave nummer1
Antal sider14
ISSN2045-2322
DOI
StatusUdgivet - dec. 2023

Bibliografisk note

Funding Information:
This work has been supported by the Russian Science Foundation under grant #18-71-10072. This grant went towards the framework development and deployment and manuscript preparation. The authors from PCCDTT received funding (No. in the Unified State Information System for Accounting of Research, Development, and Technological Works (EGISU): AAAA-A20-120071090056-3, АААА-А21-121012290079-2) under the Program of the Moscow Healthcare Department “Scientific Support of the Capital’s Healthcare” for 2020–2022.

Publisher Copyright:
© 2023, The Author(s).

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