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Differentiation of Covid-19 Pneumonia From Other Lung Diseases Using Ct Radiomic Features and Machine Learning: A Large Multicentric Cohort Study Publisher



Shiri I1 ; Salimi Y1 ; Saberi A1 ; Pakbin M2 ; Hajianfar G1 ; Avval AH3 ; Sanaat A1 ; Akhavanallaf A1 ; Mostafaei S4, 5 ; Mansouri Z1 ; Askari D6 ; Ghasemian M7 ; Sharifipour E8 ; Sandoughdaran S9 Show All Authors
Authors
  1. Shiri I1
  2. Salimi Y1
  3. Saberi A1
  4. Pakbin M2
  5. Hajianfar G1
  6. Avval AH3
  7. Sanaat A1
  8. Akhavanallaf A1
  9. Mostafaei S4, 5
  10. Mansouri Z1
  11. Askari D6
  12. Ghasemian M7
  13. Sharifipour E8
  14. Sandoughdaran S9
  15. Sohrabi A10
  16. Sadati E11
  17. Livani S12
  18. Iranpour P13
  19. Kolahi S14
  20. Khosravi B15
  21. Khateri M16
  22. Bijari S11
  23. Atashzar MR17
  24. Shayesteh SP18
  25. Babaei MR19
  26. Jenabi E20
  27. Hasanian M21
  28. Shahhamzeh A22
  29. Ghomi SYF22
  30. Mozafari A23
  31. Shirzadaski H24
  32. Movaseghi F23
  33. Bozorgmehr R25
  34. Goharpey N26
  35. Abdollahi H27, 28
  36. Geramifar P20
  37. Radmard AR29
  38. Arabi H1
  39. Rezaeikalantari K30
  40. Oveisi M31, 32
  41. Rahmim A27, 28, 33
  42. Zaidi H1, 34, 35, 36

Source: International Journal of Imaging Systems and Technology Published:2024


Abstract

To derive and validate an effective machine learning and radiomics-based model to differentiate COVID-19 pneumonia from other lung diseases using a large multi-centric dataset. In this retrospective study, we collected 19 private and five public datasets of chest CT images, accumulating to 26 307 images (15 148 COVID-19; 9657 other lung diseases including non-COVID-19 pneumonia, lung cancer, pulmonary embolism; 1502 normal cases). We tested 96 machine learning-based models by cross-combining four feature selectors (FSs) and eight dimensionality reduction techniques with eight classifiers. We trained and evaluated our models using three different strategies: #1, the whole dataset (15 148 COVID-19 and 11 159 other); #2, a new dataset after excluding healthy individuals and COVID-19 patients who did not have RT-PCR results (12 419 COVID-19 and 8278 other); and #3 only non-COVID-19 pneumonia patients and a random sample of COVID-19 patients (3000 COVID-19 and 2582 others) to provide balanced classes. The best models were chosen by one-standard-deviation rule in 10-fold cross-validation and evaluated on the hold out test sets for reporting. In strategy#1, Relief FS combined with random forest (RF) classifier resulted in the highest performance (accuracy = 0.96, AUC = 0.99, sensitivity = 0.98, specificity = 0.94, PPV = 0.96, and NPV = 0.96). In strategy#2, Recursive Feature Elimination (RFE) FS and RF classifier combination resulted in the highest performance (accuracy = 0.97, AUC = 0.99, sensitivity = 0.98, specificity = 0.95, PPV = 0.96, NPV = 0.98). Finally, in strategy #3, the ANOVA FS and RF classifier combination resulted in the highest performance (accuracy = 0.94, AUC =0.98, sensitivity = 0.96, specificity = 0.93, PPV = 0.93, NPV = 0.96). Lung radiomic features combined with machine learning algorithms can enable the effective diagnosis of COVID-19 pneumonia in CT images without the use of additional tests. © 2024 The Authors. International Journal of Imaging Systems and Technology published by Wiley Periodicals LLC.
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