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An Approach for Leukemia Classification Based on Cooperative Game Theory

机译:基于合作博弈的白血病分类方法

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摘要

Hematological malignancies are the types of cancer that affect blood, bone marrow and lymph nodes. As these tissues are naturally connected through the immune system, a disease affecting one of them will often affect the others as well. The hematological malignancies include; Leukemia, Lymphoma, Multiple myeloma. Among them, leukemia is a serious malignancy that starts in blood tissues especially the bone marrow, where the blood is made. Researches show, leukemia is one of the common cancers in the world. So, the emphasis on diagnostic techniques and best treatments would be able to provide better prognosis and survival for patients. In this paper, an automatic diagnosis recommender system for classifying leukemia based on cooperative game is presented. Through out this research, we analyze the flow cytometry data toward the classification of leukemia into eight classes. We work on real data set from different types of leukemia that have been collected at Iran Blood Transfusion Organization (IBTO). Generally, the data set contains 400 samples taken from human leukemic bone marrow. This study deals with cooperative game used for classification according to different weights assigned to the markers. The proposed method is versatile as there are no constraints to what the input or output represent. This means that it can be used to classify a population according to their contributions. In other words, it applies equally to other groups of data. The experimental results show the accuracy rate of 93.12%, for classification and compared to decision tree (C4.5) with (90.16%) in accuracy. The result demonstrates that cooperative game is very promising to be used directly for classification of leukemia as a part of Active Medical decision support system for interpretation of flow cytometry readout. This system could assist clinical hematologists to properly recognize different kinds of leukemia by preparing suggestions and this could improve the treatment of leukemic patients.
机译:血液系统恶性肿瘤是影响血液,骨髓和淋巴结的癌症类型。由于这些组织通过免疫系统自然相连,因此影响其中一个的疾病通常也会影响其他组织。血液系统恶性肿瘤包括;白血病,淋巴瘤,多发性骨髓瘤。其中,白血病是一种严重的恶性肿瘤,始于血液组织,尤其是造血的骨髓。研究表明,白血病是世界上常见的癌症之一。因此,重视诊断技术和最佳治疗方法将能够为患者提供更好的预后和生存。提出了一种基于合作博弈的白血病自动诊断推荐系统。在整个研究过程中,我们分析了流式细胞仪数据,将白血病分为八类。我们正在研究从伊朗输血组织(IBTO)收集的不同类型白血病的真实数据集。通常,数据集包含从人类白血病骨髓中采集的400个样本。这项研究涉及根据分配给标记的不同权重进行分类的合作博弈。所提出的方法是通用的,因为对输入或输出表示的内容没有限制。这意味着可以根据人口的贡献将其分类。换句话说,它同样适用于其他数据组。实验结果表明,分类的准确率达93.12%,与决策树(C4.5)相比,准确率达90.16%。结果表明,合作游戏非常有希望直接用于白血病的分类,作为用于解释流式细胞仪读数的Active Medical决策支持系统的一部分。该系统可以通过准备建议来帮助临床血液学家正确识别不同种类的白血病,从而可以改善白血病患者的治疗。

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