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Role of quantitative imaging and deep learning in interstitial lung diseases

FANNI, Salvatore C.
•
Dâ AMORE, Caterina A.
•
MILAZZO, Alessio
altro
ROMEI, Chiara
2021
  • journal article

Periodico
JOURNAL OF RADIOLOGICAL REVIEW
Abstract
Interstitial lung disease (ILD) are a large group of diffuse lung diseases characterized by similar clinical, pathological and radiological features. High resolution computed tomography (HRCT) has a central role in ILD diagnosis and management. In the last few years, computer-aided methods as Quantitative Computer Tomography (QCT) and Artificial Intelligence (AI) software were proposed as a source of reliable quantitative imaging biomarkers. The present review aimed to summarize and describe the current QCT and AI methods and to evaluate their potential diagnostic and prognostic role. The first attempt to a quantitative analysis of HRCT in ILD is represented by the density histogram analysis with the definition of two new parameter, Kurtosis and Skewness. Then texture analysis tools were developed as Adaptive Multiple Features Method (AMFM), Computer-Aided Lung Informatics for Pathology Evaluation and Ratings (CALIPER), Quantitative Lung Fibrosis (QLF) and Automated Quantification System (AQS). The introduction of AI technologies further increased the amount of objective and reproducible biomarkers. The diagnostic and prognostic role of QCT and AI methods was analyzed and confirmed in various studies, as reported in the review. QCT and AI technologies application led to the introduction of new objective biomarkers with relevant diagnostic and prognostic implications. However, there is still the need for more prospective study and the creation of open-source datasets would help to assess QCT and AI methods efficacy and to compare them.
DOI
10.23736/S2723-9284.21.00127-9
Archivio
http://hdl.handle.net/11368/2992781
https://www.minervamedica.it/it/riviste/radiologia-medica/articolo.php?cod=R24Y2021N02A0152
Diritti
closed access
FVG url
https://arts.units.it/request-item?handle=11368/2992781
Soggetti
  • Lung diseases, inters...

  • Tomography, X-ray com...

  • Artificial intelligen...

  • Machine learning

  • Idiopathic pulmonary ...

Visualizzazioni
3
Data di acquisizione
Apr 19, 2024
Vedi dettagli
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