Machine Learning and Deep Learning Approach for Medical Image Analysis Summary Generator

Sam Sudhakar J, Dr. Krithika. D. R.
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Abstract

Colorectal cancer, which is frequent, recognized tumours in both genders around the globe. As per the report generated by WHO in 2018, colon cancer placed in the third position, whereas 1.80 million individuals are affected. Precisely, it is the succeeding leading cancer, which is the second most common cause of cancer in females, and the third for males. The loss of control over the integrity of epidermal cells in bowel or malignancy can be the cause of colorectal cancer. An effective way to recognize colon cancer at an early stage and substantial treatment can reduce the ensuing death rates to a great extent. To perform Screening of Morphology of Malignant Tumor Cells in the colon, a Gastroenterologist may refer to cancer diagnosis tests for pathological images. In any Histology method, the process takes a significant duration of time due to infinite numbers of glands in the gastrointestinal system, which may lead to irreconcilable outcomes. By diagnosing through computer algorithms, can give practical and contributory results. Hence, accurate gland segmentation is one crucial prerequisite stage to get reliable and informative morphological image data. In recent times, the scholars applied machine learning algorithms to pathological image analysis for the diagnosis of cancer disease. We propose that features extracted from the diagnostic tests, given as input to a machine learning architecture used along with semantic segmentation algorithm, provide results that are accurate than the existing image segmentation algorithms. This work is the extensive review of machine learning architectures used for semantic segmentation on the histological images of the colon.In our project we will be using the following algorithms such as Adaboost as existing and Convolution Neural Network (CNN) as proposed and its accuracy is been calculated and well compared to other algorithms. It is found that CNN performs less than other algorithms
用于医学图像分析的机器学习和深度学习方法摘要生成器
结肠直肠癌,是全球常见的、男女均可患的肿瘤。根据世卫组织 2018 年发布的报告,结肠癌位居第三位,受影响人数达 180 万。准确地说,它是继癌症之后的又一主要癌症,是女性第二大最常见的癌症病因,也是男性第三大最常见的癌症病因。肠道表皮细胞的完整性失控或恶性肿瘤可能是导致大肠癌的原因。及早发现大肠癌并进行实质性治疗,可以在很大程度上降低死亡率。要对结肠中的恶性肿瘤细胞进行形态学筛查,消化内科医生可以参考癌症诊断测试的病理图像。在任何组织学方法中,由于胃肠道系统中的腺体数量无穷无尽,这一过程都需要大量的时间,这可能会导致不可调和的结果。通过计算机算法进行诊断,可以获得实用且有贡献的结果。因此,准确的腺体分割是获得可靠、翔实的形态学图像数据的一个重要前提阶段。近来,学者们将机器学习算法应用于病理图像分析,以诊断癌症疾病。我们提出,从诊断测试中提取的特征作为机器学习架构的输入,与语义分割算法一起使用,可提供比现有图像分割算法更精确的结果。在我们的项目中,我们将使用以下算法,如现有的 Adaboost 算法和提议的卷积神经网络(CNN),并对其准确性进行了计算和与其他算法的比较。结果发现,CNN 的性能低于其他算法
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