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Research on Early Warning Mechanism and Model of Liver Cancer Rehabilitation Based on CS-SVM

机译:基于CS-SVM的肝癌康复预警机制及模型研究

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Since the 20~(th) century, cancer has become one of the main diseases threatening human health. Liver cancer is a malignant tumor with extremely high clinical morbidity and fatality rate and easy recurrence after surgery. Research on the postoperative recurrence time and recurrence location of patients with liver cancer has a crucial influence on the postoperative intervention of patients. Evaluation of the clinical manifestations of patients after liver cancer surgery is conducted according to medical knowledge or national standards to determine the main factors affecting liver cancer rehabilitation. In order to better study the mechanism of liver cancer recurrence, this paper uses CS-SVM to predict the recurrence time of liver cancer patients, so as to timely intervene the patients. There are five evaluation indicators which are basic indicators, immune indicators, microenvironment indicators, psychological indicators, and nutritional indicators, respectively. This paper collects the clinical evaluation data of postoperative follow-up visits for patients with liver cancer in a hospital, improves the parameter selection process of the support vector machine by using the search ability of the cuckoo algorithm, and establishes an algorithm-optimized prediction model of support vector machine for the prognosis of liver cancer to predict the location and approximate time of recurrence. According to the clinical evaluation data of patients with liver cancer after surgery, logistics regression, BP neural network, and other related methods are used to predict the prognosis of liver cancer patients after surgery. The prediction effects of several methods are compared, and the superiority of the model is discussed. At the end of this article, we conducted an empirical analysis on the clinical evaluation data of patients with liver cancer after surgery. For the collected samples of 776 liver cancer recurrences after surgery, the established liver cancer prognosis outcome prediction model was used to predict the recurrence time and recurrence location, respectively. The mean square error of recurrence time prediction is 9.2101, which is much smaller than the prediction mean square error of BP neural network of 177.9451; the prediction accuracy of recurrence location is 95.7 #x0025;, which is much higher than the 63.14 #x0025; of logistic regression. The empirical analysis results show that the improved support vector machine model based on cuckoo established in this paper can effectively predict the time and location of cancer recurrence.
机译:自20〜(至此)以来,癌症已成为威胁人类健康的主要疾病之一。肝癌是一种恶性肿瘤,具有极高的临床发病率和死亡率,手术后容易发生。肝癌患者术后复发时间和复发位置对患者术后干预的关键影响至关重要。根据医学知识或国家标准进行肝癌手术患者临床表现的评价,以确定影响肝癌康复的主要因素。为了更好地研究肝癌复发的机制,本文使用CS-SVM预测肝癌患者的复发时间,以便及时介入患者。有五种评价指标分别是基本指标,免疫指标,微环境指标,心理指标和营养指标。本文收集医院肝癌患者术后后续访问的临床评估数据,通过使用杜鹃算法的搜索能力来改善支持向量机的参数选择过程,并建立了算法优化的预测模型支持向量机用于肝癌预后预测复发的位置和大致时间。根据手术后肝癌患者的临床评价数据,物流回归,BP神经网络和其他相关方法用于预测手术后肝癌患者的预后。比较了几种方法的预测效果,并且讨论了模型的优越性。本文结束时,我们对手术后肝癌患者的临床评价数据进行了实证分析。对于手术后776个肝癌复发的收集样本,所建立的肝癌预后结果预测模型分别用于预测复发时间和再现位置。复发时间预测的均方误差为9.2101,远小于BP神经网络的预测均线误差为177.9451;复发位置的预测准确性为95.7#x0025;,高于63.14#x0025;物流回归。实证分析结果表明,基于本文建立的杜鹃的改进的支持向量机模型可以有效地预测癌症复发的时间和地点。

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