Back to Search Start Over

Application of Supervised Machine Learning to Recognize Competent Level and Mixed Antinuclear Antibody Patterns Based on ICAP International Consensus

Authors :
Yi-Da Wu
Ruey-Kai Sheu
Chih-Wei Chung
Yen-Ching Wu
Chiao-Chi Ou
Chien-Wen Hsiao
Huang-Chen Chang
Ying-Chieh Huang
Yi-Ming Chen
Win-Tsung Lo
Lun-Chi Chen
Chien-Chung Huang
Tsu-Yi Hsieh
Wen-Nan Huang
Tsai-Hung Yen
Yun-Wen Chen
Chia-Yu Chen
Yi-Hsing Chen
Source :
Diagnostics, Vol 11, Iss 4, p 642 (2021)
Publication Year :
2021
Publisher :
MDPI AG, 2021.

Abstract

Background: Antinuclear antibody pattern recognition is vital for autoimmune disease diagnosis but labor-intensive for manual interpretation. To develop an automated pattern recognition system, we established machine learning models based on the International Consensus on Antinuclear Antibody Patterns (ICAP) at a competent level, mixed patterns recognition, and evaluated their consistency with human reading. Methods: 51,694 human epithelial cells (HEp-2) cell images with patterns assigned by experienced medical technologists collected in a medical center were used to train six machine learning algorithms and were compared by their performance. Next, we choose the best performing model to test the consistency with five experienced readers and two beginners. Results: The mean F1 score in each classification of the best performing model was 0.86 evaluated by Testing Data 1. For the inter-observer agreement test on Testing Data 2, the average agreement was 0.849 (κ) among five experienced readers, 0.844 between the best performing model and experienced readers, 0.528 between experienced readers and beginners. The results indicate that the proposed model outperformed beginners and achieved an excellent agreement with experienced readers. Conclusions: This study demonstrated that the developed model could reach an excellent agreement with experienced human readers using machine learning methods.

Details

Language :
English
ISSN :
20754418
Volume :
11
Issue :
4
Database :
Directory of Open Access Journals
Journal :
Diagnostics
Publication Type :
Academic Journal
Accession number :
edsdoj.7ffbf93dd37b4c9690001059a08b2ba8
Document Type :
article
Full Text :
https://doi.org/10.3390/diagnostics11040642