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Lung Nodules Localization and Report Analysis from Computerized Tomography (CT) Scan Using a Novel Machine Learning Approachopen access

Authors
Haq, InayatulMazhar, TehseenMalik, Muhammad AmirKamal, Mian MuhammadUllah, InamKim, TaejoonHamdi, MoniaHamam, Habib
Issue Date
1-Dec-2022
Publisher
MDPI
Keywords
CT scan; deep learning; machine intelligence; computer-aided design; magnetic resonance imaging; CNN
Citation
APPLIED SCIENCES-BASEL, v.12, no.24
Journal Title
APPLIED SCIENCES-BASEL
Volume
12
Number
24
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/88472
DOI
10.3390/app122412614
ISSN
2076-3417
Abstract
A lung nodule is a tiny growth that develops in the lung. Non-cancerous nodules do not spread to other sections of the body. Malignant nodules can spread rapidly. One of the numerous dangerous kinds of cancer is lung cancer. It is responsible for taking the lives of millions of individuals each year. It is necessary to have a highly efficient technology capable of analyzing the nodule in the pre-cancerous phases of the disease. However, it is still difficult to detect nodules in CT scan data, which is an issue that has to be overcome if the following treatment is going to be effective. CT scans have been used for several years to diagnose nodules for future therapy. The radiologist can make a mistake while determining the nodule's presence and size. There is room for error in this process. Radiologists will compare and analyze the images obtained from the CT scan to ascertain the nodule's location and current status. It is necessary to have a dependable system that can locate the nodule in the CT scan images and provide radiologists with an automated report analysis that is easy to comprehend. In this study, we created and evaluated an algorithm that can identify a nodule by comparing multiple photos. This gives the radiologist additional data to work with in diagnosing cancer in its earliest stages in the nodule. In addition to accuracy, various characteristics were assessed during the performance assessment process. The final CNN algorithm has 84.8% accuracy, 90.47% precision, and 90.64% specificity. These numbers are all relatively close to one another. As a result, one may argue that CNN is capable of minimizing the number of false positives through in-depth training that is performed frequently.
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