基于人工神经网络和优化算法的霍奇金淋巴瘤分期检测决策支持系统

Fatma Akalın, M. Orhan, M. Buyukavci
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引用次数: 1

摘要

霍奇金淋巴瘤是一种具有独特组织学、免疫表型和临床特征的疾病。这种疾病发生在所有淋巴瘤的近30%。它的可治疗性很高。然而,治疗方案是在确定阶段和风险状态后确定的。因此,医生正确判断疾病的阶段是一个重要的过程。用于此决定的一些数据包括患者的病史、详细的体格检查、实验室结果、成像方法和骨髓活检结果。混合FDG-PET是医学界使用的另一种方法。该方法用于诊断,治疗反应评价,分期和再分期过程。然而,它是基于辐射的。因此,它有可能在未来产生不良后果。在这项研究中,基于人工智能的计算机辅助决策支持系统,以减少使用的医疗方法和辐射暴露的数量。数据来自NCBI-GEO数据集。这些包含缺失值的数据的求值可以通过两种方式处理。首先,从数据集中删除初始评估中缺失值的样本。然后,使用人工神经网络架构中的“trainlm”函数对这些数据进行训练。然而,减少估计的误差值是很重要的。为此,分别使用人工蜂群算法、粒子群优化算法和入侵杂草算法对人工神经网络架构进行再训练。其次,对包含缺失值的数据集再次执行相同的操作。结果表明,入侵杂草和粒子群优化算法的平均错误率分别为1,45547 e +14和1,23103e +14,性能最佳。
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A Decision Support System For Detecting Stage In Hodgkin Lymphoma Patients Using Artificial Neural Network and Optimization Algorithms
Hodgkin-type lymphoma is a disease with unique histological, immunophenotypic, and clinical features. This disease occurs in nearly 30% of all lymphomas. Its treatable is high. However, the treatment plan is specified after the stage and risk status are determined. For this reason, it is an important process for doctors to decide on the stage of the disease correctly. Some of the data used for this decision are the patient's history, detailed physical examination, laboratory findings, imaging methods and bone marrow biopsy results. Hybrid FDG-PET is the other method used in the medical world. This method is used in diagnosis, evaluation of response given to treatment, staging and restaging process. However, it is radiation-based. Therefore it has the possibility of producing undesirable results in the future. In this study, an artificial intelligence-based computer-assisted decision support system is done to reduce the number of used medical methods and radiation exposure. Data were obtained from the NCBI-GEO dataset. The evaluation of these data, which contains missing values, is handled in two ways. Firstly, samples with missing values in the initial evaluation are deleted from the dataset. Then, these data are trained with “trainlm” function in artificial neural network architecture. However, reducing the error value of the estimates is important. For this, the artificial neural network architecture is retrained with the artificial bee colony algorithm, particle swarm optimization algorithm and invasive weed algorithm, respectively. Secondly, the same operations are performed again on the dataset containing missing values. As a result of the training, the maximum performance was obtained for invasive weed and particle swarm optimization algorithms with 1,45547E+14 and 1,23103E+14 average error rates, respectively.
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