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Classification of Oral Submucous Fibrosis using Convolutional Neural Network

机译:卷积神经网络的口腔粘贴纤维化分类

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The biology is disrupted for many reasons which are sometimes fathomable and sometimes not. The paramount factors can be genetic and variations acquired but both subsequently gives the catastrophic outcome in case of menacing disease such as cancer. The detection of it has been done and goes way back but newer technology is taking over every decade in order to make it more and more precise. As human intervention can lead to errors, automated detection can improve the accuracy. Therefore in this study, convolutional neural network (CNN) has been explored for detection of normal and different stages of oral submucous fibrosis from microscopic images of stained biopsy samples. Data pre-processing has been implemented before feeding the images into neural network and an overall accuracy of 99.4% has been achieved which shows the effectiveness of CNN for the same.
机译:由于许多原因,生物学被扰乱了有时是受影响的并且有时候。 最重要的因素可以是获得的遗传和变异,但随后两者都在威胁疾病如癌症的情况下给予灾难性的结果。 它已经完成并回头进行了检测,但新技术正在接管每十年,以使其更加精确。 由于人类干预会导致错误,自动检测可以提高准确性。 因此,在本研究中,已经探讨了卷积神经网络(CNN),用于检测来自染色活组织检查样品的微观图像的正常和不同阶段的正常和不同阶段。 数据预处理在将图像送入神经网络之前已经实施,并且已经实现了99.4%的整体精度,这表明了CNN的有效性。

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