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[The contribution of artificial intelligence (AI) subsequent to the processing of thoracic imaging]. / Apport de l'intelligence artificielle dans le post-traitement de l'imagerie thoracique.
Grenier, P A; Brun, A L; Mellot, F.
Affiliation
  • Grenier PA; Délégation à la recherche clinique et l'innovation, hôpital Foch, Suresnes, France. Electronic address: psl.agenda.pg@gmail.com.
  • Brun AL; Service de radiologie, hôpital Foch, Suresnes, France.
  • Mellot F; Service de radiologie, hôpital Foch, Suresnes, France.
Rev Mal Respir ; 41(2): 110-126, 2024 Feb.
Article in Fr | MEDLINE | ID: mdl-38129269
ABSTRACT
The contribution of artificial intelligence (AI) to medical imaging is currently the object of widespread experimentation. The development of deep learning (DL) methods, particularly convolution neural networks (CNNs), has led to performance gains often superior to those achieved by conventional methods such as machine learning. Radiomics is an approach aimed at extracting quantitative data not accessible to the human eye from images expressing a disease. The data subsequently feed machine learning models and produce diagnostic or prognostic probabilities. As for the multiple applications of AI methods in thoracic imaging, they are undergoing evaluation. Chest radiography is a practically ideal field for the development of DL algorithms able to automatically interpret X-rays. Current algorithms can detect up to 14 different abnormalities present either in isolation or in combination. Chest CT is another area offering numerous AI applications. Various algorithms have been specifically formed and validated for the detection and characterization of pulmonary nodules and pulmonary embolism, as well as segmentation and quantitative analysis of the extent of diffuse lung diseases (emphysema, infectious pneumonias, interstitial lung disease). In addition, the analysis of medical images can be associated with clinical, biological, and functional data (multi-omics analysis), the objective being to construct predictive approaches regarding disease prognosis and response to treatment.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Pneumonia / Multiple Pulmonary Nodules Limits: Humans Language: Fr Journal: Rev Mal Respir Year: 2024 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Pneumonia / Multiple Pulmonary Nodules Limits: Humans Language: Fr Journal: Rev Mal Respir Year: 2024 Document type: Article