Machine learning aided screening of lung diseases in CT images.
Abstract
Chest computed tomography (CT) scan image screening for lung diseases is a laborious
and time-consuming technique that can only be handled by qualified radiologists. Due
to a shortage of experienced radiologists in Uganda, the workload has increased, which
could eventually result in fatal diagnostic errors brought on by exhaustion. Radiologists
can assist patients by using machine learning-aided lung disease screening in chest CT
scan images to balance the workload and lessen the likelihood of these errors. In this
study, we propose an automated decision support system with a convolutional neural
network model built on the ResNet50 architecture that receives a chest CT scan image
as an input and returns the probability distribution of the possible presence of any of
the four categories; covid-19, healthy, lung cancer and pneumonia in the chest CT scan
image. A total of 379 chest CT scan images were included in the dataset used to test
the model, and they were divided into four categories; covid-19, healthy, lung cancer
and pneumonia. The model achieved an accuracy of 96of 96.25