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Automatic detection and classification of tuberculosis bacilli from camera-enabled smartphone microscopic images

机译:从带摄像头的智能手机显微图像中自动检测和鉴定结核杆菌

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Sputum smear conventional microscopy (CM) is used as primary bacteriological test for detection of TB. This technique is the most preferred technique in low and middle income countries due to its availability as well as accessibility. Manual screening of bacilli using CM is time consuming and labor intensive. As a result, the sensitivity of TB detection is compromised leading to misdiagnosis 33-50% of active cases. Automated methods can increase the sensitivity and specificity of TB detection. Currently, the remote areas of TB-endemic developing countries have easy accessibility to portable and camera-enabled Smartphone microscope for capturing images from ZN-stained smear slide. In this paper, the performance of watershed segmentation method for detection and classification of bacilli from camera-enable Smartphone microscopic images is presented. Several preprocessing techniques have been implemented prior to watershed segmentation. Current method has achieved the sensitivity and specificity of 93.3% and 87% respectively for classifying an image as TB positive or negative.
机译:痰涂片常规显微镜(CM)被用作检测结核病的主要细菌学检查。由于该技术的可用性和可及性,它是中低收入国家/地区最优选的技术。使用CM手动筛选细菌是费时且费力的。结果,结核病检测的敏感性降低,导致33-50%的活跃病例被误诊。自动化方法可以提高结核病检测的敏感性和特异性。当前,结核病流行发展中国家的偏远地区可轻松使用便携式和带相机功能的智能手机显微镜,以从ZN染色的涂片中捕获图像。在本文中,提出了一种分水岭分割方法从具有相机功能的智能手机显微图像中对细菌进行检测和分类的性能。在分水岭分割之前已经实施了几种预处理技术。当前方法将图像分类为结核病阳性或阴性的敏感性和特异性分别为93.3%和87%。

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