An X-ray image-based pruned dense convolution neural network for tuberculosis detection
Date
2024
Journal Title
Journal ISSN
Volume Title
Publisher
Computer Methods and Programs in Biomedicine Update
Abstract
According to the Ministry of Health in Kenya, tuberculosis (TB) is the fifth greatest cause of death and the main
infectious disease killer in Kenya and across the world. In Kenya and throughout Africa, TB continues to wreak
havoc on many vulnerable populations, homes, and communities despite being preventable and treatable.
Common TB diagnostics, like blood and skin tests, frequently fail to identify the precise kind of TB. As a result,
the World Health Organization (WHO) advises expanding the use of X-rays, for screening. In TB-prevalent re-
gions of Kenya, a shortage of radiologists hampers effective screening and diagnosis, highlighting the need for
scalable solutions for accurate X-ray analysis.
Recent advancements in deep learning techniques have shown promise in the healthcare sector, particularly in
radiology. However, many deep convolutional neural network (CNN) architectures are computationally intensive
due to their size and resource requirements. This study designed and developed a Pruned CNN to address this
issue by applying pruning techniques to baseline architectures. This approach significantly reduced model sizes
while maintaining accuracy levels. Specifically, the pruned version of the DenseNet model achieved an
impressive 99 % accuracy with a reduction rate of 65.8 %. These results highlight the potential of this pruned
CNN as an effective and efficient tool for TB detection, particularly in resource-constrained environments. This
study addresses the shortage of radiological expertise in many regions by providing a tool that can assist in the
interpretation of X-ray images. This capability can help healthcare providers deliver timely and accurate di-
agnoses, thereby improving patient care.
Description
: echebet@chuka.ac.ke
dgmwathi@chuka.ac.ke
lgitonga@chuka.ac.ke
skinyori@chuka.ac.ke
Keywords
Pruned CNN Tuberculosis detection Densely convolution neural network Deep learning Image processing Pruning
Citation
Too, E. C., Mwathi, D. G., Gitonga, L. K. & Mwaka. P. ( 2024) An X-ray image-based pruned dense convolution neural network for tuberculosis detection.Computer Methods and Programs in Biomedicine Update
