Leukemia detection using Artificial Neural Networks in Images of Human Blood Sample

Hakar J. Mohamed Salih, J. Arif, Shaimaa Q. Sabri, Ghada A. Taqa, Ahmet Çınar
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Abstract

This article presents a preliminary report that uses minuscule images of blood tests to develop a diagnosis of leukemia. Examining through images is crucial since illnesses can be recognized and examined at an earlier stage using the images. The framework will be centered on leukemia and white blood cell illness. In fact, even the hematologist has trouble organizing the leukemic cells, and manually arranging the platelets takes a long time and is quite loose. In this way, early detection of leukemia recurrence allows the patient to receive the appropriate treatment. In order to address this problem, the framework will make use of the capabilities in small images and examine surface, geometry, shading, and quantifiable investigation modifications. These features' variations will be utilized as the classifier input. has transformed the use of images K proposes that (NN) and agglomeration. Examining a wide range of failure measures and increasing the intricacy of every system, the findings are examined. Utilizing feedforward (NN), image division is accomplished with less noise and a very sluggish conjunction rate. K-means agglomeration and (ANN) are intentionally used in this analysis to create a collection of processes that will work together to produce a much better presentation in (IS). An analysis has been conducted to determine the best rule for (IS).
利用人工神经网络检测人体血液样本图像中的白血病
本文介绍了一份初步报告,该报告利用血液化验的微小图像来诊断白血病。通过图像进行检查至关重要,因为利用图像可以在早期阶段识别和检查疾病。该框架将以白血病和白细胞疾病为中心。事实上,即使是血液学专家也很难整理出白血病细胞,而手动整理血小板则需要很长时间,而且相当松散。这样,及早发现白血病复发,就能让病人接受适当的治疗。为了解决这个问题,该框架将利用小图像的功能,检查表面、几何形状、阴影和可量化的调查修改。这些特征的变化将被用作分类器的输入。对各种故障措施进行了研究,并增加了每个系统的复杂性。利用前馈 (NN),可在噪声较小和结合率非常缓慢的情况下完成图像分割。本分析有意使用 K-均值聚类和(ANN),以创建一个流程集合,共同在(IS)中产生更好的展示效果。我们进行了一项分析,以确定 (IS) 的最佳规则。
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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