Detail publikace

Corticosteroid Treatment Prediction using Chest X-ray and Clinical Data

MEZINA, A. GENZOR, S. BURGET, R. MYŠKA, V. MIZERA, J. OMETOV, A.

Originální název

Corticosteroid Treatment Prediction using Chest X-ray and Clinical Data

Typ

článek v časopise ve Web of Science, Jimp

Jazyk

angličtina

Originální abstrakt

Background and Objective: Severe courses of COVID-19 disease can lead to long-term complications. The post-acute phase of COVID-19 refers to the persistent or new symptoms. This problem is becoming more relevant with the increasing number of patients who have contracted COVID-19 and the emergence of new virus variants. In this case, preventive treatment with corticosteroids can be applied. However, not everyone benefits from the treatment, moreover, it can have severe side effects. Currently, no study would analyze who benefits from the treatment. Methods: This work introduces a novel approach to the recommendation of Corticosteroid (CS) treatment for patients in the post-acute phase. We have used a novel combination of clinical data, including blood tests, spirometry, and X-ray images from 273 patients. These are very challenging to collect, especially from patients in the post-acute phase of COVID-19. To our knowledge, no similar dataset exists in the literature. Moreover, we have proposed a unique methodology that combines machine learning and deep learning models based on Vision Transformer (ViT) and InceptionNet, preprocessing techniques, and pretraining strategies to deal with the specific characteristics of our data. Results: The experiments have proved that combining clinical data with CXR images achieves 8% higher accuracy than independent analysis of CXR images. The proposed method reached 80.0% accuracy (78.7% balanced accuracy) and a ROC-AUC of 0.89. Conclusions: The introduced system for CS treatment prediction using our neural network and learning algorithm is unique in this field of research. Here, we have shown the efficiency of using mixed data and proved it on real-world data. The paper also introduces the factors that could be used to predict long-term complications. Additionally, this system was deployed to the hospital environment as a recommendation tool, which admits the clinical application of the proposed methodology.

Klíčová slova

Image classification; Chest X-ray images; Vision transformer; Treatment prediction; Clinical data; Post-acute COVID-19

Autoři

MEZINA, A.; GENZOR, S.; BURGET, R.; MYŠKA, V.; MIZERA, J.; OMETOV, A.

Vydáno

2. 12. 2024

Nakladatel

Elsevier

ISSN

2001-0370

Periodikum

Computational and Structural Biotechnology Journal

Ročník

24

Číslo

December 24

Stát

Švédské království

Strany od

53

Strany do

65

Strany počet

13

URL

Plný text v Digitální knihovně

BibTex

@article{BUT185577,
  author="Anzhelika {Mezina} and Samuel {Genzor} and Radim {Burget} and Vojtěch {Myška} and Jan {Mizera} and Aleksandr {Ometov}",
  title="Corticosteroid Treatment Prediction using Chest X-ray and Clinical Data",
  journal="Computational and Structural Biotechnology Journal",
  year="2024",
  volume="24",
  number="December 24",
  pages="53--65",
  doi="10.1016/j.csbj.2023.11.057",
  issn="2001-0370",
  url="https://www.sciencedirect.com/science/article/pii/S2001037023004713"
}