肺癌患者预后的知识表示

L. Minelli, M. C. d'Ornellas, Ana T. Winck
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引用次数: 1

摘要

世界范围内癌症病例的逐渐增加,对使用计算资源准确检索数据库中记录的信息提出了要求。为了更好地评估病理反应和预测癌症患者的预后,可以从专家那里突出检索到的信息的重要性。本文提出了一种方法来表示癌症登记处的知识,强调预后。它使用数据挖掘技术在类似情况下的患者生命周期数据中找到模式。这项工作的重点是生成关联规则,以查找这些注册表上的模式,以便衡量患者预后并推动医疗保健专家得出结论。还针对国际肿瘤学组织和卫生出版物进行了验证,以确保数据和工作的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge representation for lung cancer patients' prognosis
The gradual increase of cancer cases worldwide has been posing a need on the use of computing resources to accurately retrieve the information recorded in databases. One can highlight the retrieved information importance from a specialist in order to better evaluate pathological response and predict the cancer patient prognosis. This paper presents a way to represent knowledge of cancer registries with emphasis on prognosis. It makes use data mining techniques to find patterns in data stored for patient's lifetime in similar situations. The work is focused on the generation of association rules to find patterns on these registries in order to measure the patient prognosis and drive healthcare experts conclusions. A validation against international oncology organizations and health publications was also made to ensure data and work reliability.
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