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Risk Factors Identification of Malignant Mesothelioma: A Data Mining Based Approach

机译:恶性间皮瘤的危险因素识别:一种基于数据挖掘的方法

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A significant type of Lung cancer today know to the world is called Malignant Mesothelioma (MM). MM is associated with an inferior prognosis, and the majority of patients do not show symptoms. The etiology of MM is essential for the identification of disease. Clinical results provide a better way for the treatment of disease. Typically, costly imaging and laboratory resources, i.e. (X-rays, Magnetic Resonance Imaging (MRI), Positron Emission Tomography (PET) scans, biopsies, and blood tests) are required for the identification of MM risk factors. Furthermore, these methods are often expensive and invasive. The primary purpose of this work is to explore risk factors of MM. The dataset consists of healthy and mesothelioma patients, but only mesothelioma patients were selected for the identification of symptoms. The raw data set has been pre-processed, and then the Apriori method was utilized for association rules with various configurations. The pre-processing task involved the removal of duplicated and irrelevant attributes, balanced the dataset, numerical to the nominal conversion of attributes in the dataset and creating the association rules in the dataset. Strong associations of disease's factors; asbestos exposure, erythrocyte sedimentation rate, duration of time for asbestos exposure and Pleural to serum LDH ratio determined via Apriori algorithm. The identification of risk factors associated with MM may prevent patients from going into the high danger of the disease. This will also help to control the comorbidities associated with MM, which are cardiovascular diseases, cancer-related emotional distress, diabetes, anemia, and hypothyroidism.
机译:当今世界上已知的一种重要类型的肺癌称为恶性间皮瘤(MM)。 MM与预后差有关,大多数患者没有症状。 MM的病因对疾病的识别至关重要。临床结果为疾病的治疗提供了更好的方法。通常,需要昂贵的成像和实验室资源(例如X射线,磁共振成像(MRI),正电子发射断层扫描(PET)扫描,活检和血液检查)来识别MM危险因素。此外,这些方法通常昂贵且具有侵入性。这项工作的主要目的是探讨MM的危险因素。该数据集由健康和间皮瘤患者组成,但仅选择间皮瘤患者进行症状鉴定。原始数据集已经过预处理,然后将Apriori方法用于具有各种配置的关联规则。预处理任务包括删除重复的和不相关的属性,平衡数据集,将数据集中的属性从数值转换为名义上的转换以及在数据集中创建关联规则。与疾病因素有很强的联系;通过Apriori算法确定石棉暴露,红细胞沉降率,石棉暴露持续时间以及胸膜与血清LDH的比率。识别与MM相关的危险因素可能会阻止患者陷入该疾病的高度危险中。这也将有助于控制与MM相关的合并症,这些合并症是心血管疾病,与癌症有关的情绪困扰,糖尿病,贫血和甲状腺功能减退症。

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