Automatic Chronic Degenerative Diseases Identification Using Enteric Nervous System Images
Gustavo Z. Felipe, Jacqueline N. Zanoni, Camila C., Sehaber-Sierakowski, Gleison D. P. Bossolani, Sara R. G. Souza, Franklin C., Flores, Luiz E. S. Oliveira, Rodolfo M. Pereira, Yandre M. G. Costa

TL;DR
This paper presents a machine learning approach combining handcrafted and deep learning features to accurately identify chronic degenerative diseases from Enteric Nervous System images, aiding early diagnosis.
Contribution
It introduces a novel dataset of EGC images for three diseases and evaluates combined feature techniques for disease classification.
Findings
Recognition rates of 89.30% for Rheumatoid Arthritis
98.45% for Cancer, and 95.13% for Diabetes Mellitus
Demonstrates effectiveness of combined features in disease detection
Abstract
Studies recently accomplished on the Enteric Nervous System have shown that chronic degenerative diseases affect the Enteric Glial Cells (EGC) and, thus, the development of recognition methods able to identify whether or not the EGC are affected by these type of diseases may be helpful in its diagnoses. In this work, we propose the use of pattern recognition and machine learning techniques to evaluate if a given animal EGC image was obtained from a healthy individual or one affect by a chronic degenerative disease. In the proposed approach, we have performed the classification task with handcrafted features and deep learning based techniques, also known as non-handcrafted features. The handcrafted features were obtained from the textural content of the ECG images using texture descriptors, such as the Local Binary Pattern (LBP). Moreover, the representation learning techniques employed…
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