Examining the Validity of Input Lung CT Images Submitted to the AI-Based Computerized Diagnosis

Kosareva, Aleksandra A. and Paulenka, Dzmitry A. and Snezhko, Eduard V. and Bratchenko, Ivan A. and Kovalev, Vassili A. (2022) Examining the Validity of Input Lung CT Images Submitted to the AI-Based Computerized Diagnosis. Journal of Biomedical Photonics & Engineering, 8 (3). 030307. ISSN 24112844

[thumbnail of 3500-10385-1-PB.pdf] Text
3500-10385-1-PB.pdf - Published Version

Download (2MB)

Abstract

A well-designed CAD tool should respond to input requests, user actions, and perform input checks. Thus, an important element of such a tool is the pre-processing of incoming data and screening out those data that cannot be processed by the application. In this paper, we consider non-trivial methods of chest computed tomography (CT) images verifications: modality and human chest checks. We review sources to develop training datasets, describe architectures of convolution neural networks (CNN), clarify pre-processing and augmentation processes of chest CT scans and show results of training. The developed application showed good results: 100% classification accuracy on the test dataset for modality check and 89% classification accuracy on the test dataset for checking of lungs presence. Analysis of wrong predictions showed that the model performs poorly on biopsy of lungs. In general, the developed input data validation model shows good results on the designed datasets for CT image modality check and for checking of lungs presence.

Item Type: Article
Subjects: Opene Prints > Medical Science
Depositing User: Managing Editor
Date Deposited: 29 Mar 2023 05:34
Last Modified: 31 Jan 2024 04:16
URI: http://geographical.go2journals.com/id/eprint/1655

Actions (login required)

View Item
View Item