基于软计算技术的肺癌综合预后诊断系统

V. Nadiminti, M. Babu
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引用次数: 1

摘要

如今,肺癌是全世界男性和女性死亡的首要原因之一。虽然有很多治疗选择,如手术、放疗和化疗,但患者的五年生存率相当低。然而,如果早期发现肺癌,生存率可达54%。因此,早期发现肺癌对降低肺癌死亡率至关重要。医学专家不断努力寻找肺癌早期预测和诊断的最佳解决方案;本研究尝试设计和开发一种新型的集成软计算预测系统,以处理各类患者的临床数据来诊断肺癌疾病。本文采用数据挖掘技术对数值和文本数据进行处理,采用图像处理技术对CT扫描图像进行处理,采用神经网络对肺癌患者图像进行训练,采用模糊推理机制对肺癌分期进行预测。这种综合方法可以检测出有预后的肺癌疾病,并建议专家系统对肺癌疾病进行诊断。即使是小结节(3-10毫米),该系统也能以96%的准确率确定结节类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Integrated Prognosis & Diagnosis System for Lung Cancer Disease Detection using Soft Computing Techniques
 Nowadays, lung cancer is one of the ranking first causes of mortality worldwide among men and women. Although there are a lot of treatment options like surgery, radiotherapy, and chemotherapy, five-year survival rate for patients is quite low. However, survival rate may go up to 54% in case lung cancer is identified in an early stage. Therefore, early detection of lung cancer is vital to decrease lung cancer mortality. Medical Experts are continuously trying to find the best solution for the early prediction and diagnosis of Lung Cancer Disease; in this Research work, an attempt has been made to design and develop a novel integrated soft computing predictive system to handle various types of patients’ clinical data to diagnose the lung cancer disease. Here data mining techniques are used to handle the numeric and textual data, image processing techniques are used to handle CT scan images, neural networks are used to train the lung cancer patient images, and fuzzy inference mechanism is used to predict the lung cancer stages. This integrated approach results in detection of lung cancer disease with Prognosis and suggesting diagnosis by the expert system for lung cancer disease. Even in cases of small-sized nodules (3–10 mm), the proposed system is able to determine the nodule type with 96% accuracy.
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