Department of Computer Science and Engineering, New Prince Shri Bhavani College of Engineering and Technology, Chennai, Tamil Nādu, India.
Department of ECE, KSRM College of Engineering, Kadapa, Andhra Pradesh, India.
Comput Intell Neurosci. 2022 Sep 28;2022:3357508. doi: 10.1155/2022/3357508. eCollection 2022.
In the modern world, Tuberculosis (TB) is regarded as a serious health issue with a high rate of mortality. TB can be cured completely by early diagnosis. For achieving this, one tool utilized is CXR (Chest X-rays) which is used to screen active TB. An enhanced deep learning (DL) model is implemented for automatic Tuberculosis detection. This work undergoes the phases like preprocessing, segmentation, feature extraction, and optimized classification. Initially, the CXR image is preprocessed and segmented using AFCM (Adaptive Fuzzy C means) clustering. Then, feature extraction and several features are extracted. Finally, these features are given to the DL classifier Deep Belief Network (DBN). To improve the classification accuracy and to optimize the DBN, a metaheuristic optimization Adaptive Monarch butterfly optimization (AMBO) algorithm is used. Here, the Deep Belief Network with Adaptive Monarch butterfly optimization (DBN-AMBO) is used for enhancing the accuracy, reducing the error function, and optimizing weighting parameters. The overall implementation is carried out on the Python platform. The overall performance evaluations of the DBN-AMBO were carried out on MC and SC datasets and compared over the other approaches on the basis of certain metrics.
在现代社会,结核病(TB)被认为是一个严重的健康问题,死亡率很高。通过早期诊断可以完全治愈结核病。为此,使用了一种工具,即 CXR(胸部 X 光片),用于筛查活动性结核病。为了实现自动结核病检测,实施了增强型深度学习(DL)模型。该工作经历了预处理、分割、特征提取和优化分类等阶段。首先,使用 AFCM(自适应模糊 C 均值)聚类对 CXR 图像进行预处理和分割。然后,提取特征并提取多个特征。最后,将这些特征提供给 DL 分类器深度置信网络(DBN)。为了提高分类准确性并优化 DBN,使用了一种元启发式优化自适应帝王蝶优化(AMBO)算法。在这里,使用具有自适应帝王蝶优化的深度置信网络(DBN-AMBO)来提高准确性、降低误差函数并优化加权参数。整个实现是在 Python 平台上进行的。基于某些指标,在 MC 和 SC 数据集上对 DBN-AMBO 的整体性能进行了评估,并与其他方法进行了比较。