Detection of White Blood Cell Cancer using Deep Learning using Cmyk-Moment Localisation for Information Retrieval

M. Muthumanjula, Ramasubramanian Bhoopalan
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引用次数: 11

Abstract

Medical diagnosis, notably concerning tumors, has been transformed by artificial intelligence as well as deep neural network. White blood cell identification, in particular, necessitates effective diagnosis and therapy. White Blood Cell Cancer (WBCC) comes in a variety of forms. Acute Leukemia Lymphocytes (ALL), Acute Myeloma Lymphocytes (AML), Chronic Leukemia Lymphocytes (CLL), and Chronic Myeloma Lymphocytes (CML) are white blood cell cancers for which detection is time-consuming procedure, vulnerable to sentient as well as equipment blunders. Despite just a comprehensive review with a competent examiner, it can be hard to render a precise conclusive determination in some cases. Conversely, Computer-Aided Diagnosis (CAD) may assist in lessening the number of inaccuracies as well as duration spent in diagnosing WBCC. Though deep learning is widely regarded as the most advanced method for detecting WBCCs, the richness of the retrieved attributes employed in developing the pixel-wise categorization algorithms has a substantial relationship with the efficiency of WBCC identification. The investigation of the various phases of alterations related with WBC concentrations and characteristics is crucial to CAD. Leveraging image handling plus deep learning technologies, a novel fusion characteristic retrieval technique has been created in this research. The suggested approach is divided into two parts: 1) The CMYK-moment localization approach is applied to define the Region of Interest (ROI) and 2) A CNN dependent characteristic blend strategy is utilized to obtain deep learning characteristics. The relevance of the retrieved characteristics is assessed via a variety of categorization techniques. The suggested component collection approach versus different attributes retrieval techniques is tested with an exogenous resource. With all the predictors, the suggested methodology exhibits good effectiveness, adaptability, including consistency, exhibiting aggregate categorization accuracies of 97.57 percent and 96.41 percent, correspondingly, utilizing the main as well as auxiliary samples. This approach has provided a novel option for enhancing CLL identification that may result towards a more accurate identification of malignancies.
基于cmyk -矩定位信息检索的深度学习检测白细胞癌
人工智能和深度神经网络已经改变了医疗诊断,特别是关于肿瘤的诊断。特别是白细胞的鉴定,需要有效的诊断和治疗。白细胞癌(WBCC)有多种形式。急性白血病淋巴细胞(ALL)、急性骨髓瘤淋巴细胞(AML)、慢性白血病淋巴细胞(CLL)和慢性骨髓瘤淋巴细胞(CML)是白细胞癌,检测过程耗时,容易受到感知和设备错误的影响。尽管只有一个有能力的审查员进行全面的审查,但在某些情况下很难做出精确的结论性决定。相反,计算机辅助诊断(CAD)可以帮助减少诊断小细胞癌的不准确性和持续时间。虽然深度学习被广泛认为是检测WBCC最先进的方法,但在开发逐像素分类算法时所使用的检索属性的丰富程度与WBCC识别的效率有很大的关系。研究与白细胞浓度和特征相关的不同阶段的变化对CAD至关重要。本研究利用图像处理和深度学习技术,建立了一种新的融合特征检索技术。该方法分为两部分:1)使用cmyk矩定位方法定义感兴趣区域(ROI); 2)使用依赖于CNN的特征混合策略获得深度学习特征。通过各种分类技术评估检索特征的相关性。使用外源资源对建议的组件收集方法与不同的属性检索技术进行了测试。对于所有的预测因子,建议的方法显示出良好的有效性、适应性和一致性,在使用主样本和辅助样本时,分类准确率分别为97.57%和96.41%。这种方法为增强CLL识别提供了一种新的选择,可能导致更准确地识别恶性肿瘤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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