Amarja Adgaonkar, Aditi Atreya, Akshay D Mulgund and Juhi R Nath. Article: Identification of Tuberculosis bacilli using Image Processing. IJCA Proceedings on International Conference on Electronics & Computing Technologies ICONECT:25-28, May 2014. Full text available. BibTeX
@article{key:article, author = {Amarja Adgaonkar and Aditi Atreya and Akshay D. Mulgund and Juhi R. Nath}, title = {Article: Identification of Tuberculosis bacilli using Image Processing}, journal = {IJCA Proceedings on International Conference on Electronics & Computing Technologies}, year = {2014}, volume = {ICONECT}, pages = {25-28}, month = {May}, note = {Full text available} }
Abstract
Tuberculosis is currently the world's leading cause of death from a single infectious disease. In the case of an epidemic the only option of diagnosis remains is the sputum examination. To improve the diagnostic process we are developing an automated method for the detection of tuberculosis bacilli in clinical specimens, preferably sputum smears. Our proposed method makes use of image processing techniques and neural network classifiers for the automatic identification of TB bacilli using Auramine stained specimens of sputum. The developed system , currently shows 93. 5% sensitivity for identifying individual bacilli. There are numerous TB bacilli with active pulmonary TB in the patient's sputum. The overall diagnostic accuracy of the patients with positive smear is expected to be very high. Some potential benefits of automated screening for TB are accurate and rapid diagnosis, increased population screening and reduced health risk.
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