Detection of common thorax diseases from X-Ray images using a fusion of transfer and statistical learning method
Date
2023-05Publisher
Brac UniversityAuthor
Rafi, Ahmad AbdurMahmud, Muhtasim
Pranto, Sakib Dewan
Rahman, Sayemur
Chowdhury, Shihab Rumee
Metadata
Show full item recordAbstract
An essential component of medical diagnosis is the precise detection and localization
of anomalies in X-rays of the chest images. It is urgently necessary to develop
the most precise automated model to identify thorax diseases because the number
of patients with thorax diseases is rising worldwide. In order to build a reliable
prediction model for such tasks, experts will need to manually label a sizable dataset
of X-ray images. Nevertheless, more data is needed to build exact models to detect
these diseases automatically. As a result, we’re committed to creating a model
that detects the anomalies from thorax X-rays automatically, learning from a small
amount of X-ray image data that is publicly available and easy to get. To do so,
we propose a fusion model by combining transfer learning and statistical learning
methods. The comparative reference baseline was significantly outperformed. We
show that the detection of thorax diseases can be improved by using our fusion
model, allowing quicker diagnosis and treatment.