Sharma Neha, Om Hari
Dr. D.Y. Patil Institute of Master of Computer Applications, Akurdi, Savitribai Phule Pune University, Maharashtra 411007, India.
Computer Science and Engineering Department, Indian School of Mines, Dhanbad, Jharkhand 826004, India.
ScientificWorldJournal. 2015;2015:234191. doi: 10.1155/2015/234191. Epub 2015 Jun 15.
In India, the oral cancers are usually presented in advanced stage of malignancy. It is critical to ascertain the diagnosis in order to initiate most advantageous treatment of the suspicious lesions. The main hurdle in appropriate treatment and control of oral cancer is identification and risk assessment of early disease in the community in a cost-effective fashion. The objective of this research is to design a data mining model using probabilistic neural network and general regression neural network (PNN/GRNN) for early detection and prevention of oral malignancy. The model is built using the oral cancer database which has 35 attributes and 1025 records. All the attributes pertaining to clinical symptoms and history are considered to classify malignant and non-malignant cases. Subsequently, the model attempts to predict particular type of cancer, its stage and extent with the help of attributes pertaining to symptoms, gross examination and investigations. Also, the model envisages anticipating the survivability of a patient on the basis of treatment and follow-up details. Finally, the performance of the PNN/GRNN model is compared with that of other classification models. The classification accuracy of PNN/GRNN model is 80% and hence is better for early detection and prevention of the oral cancer.
在印度,口腔癌通常在恶性肿瘤晚期出现。确定诊断对于启动可疑病变的最有利治疗至关重要。以具有成本效益的方式在社区中识别早期疾病并进行风险评估是口腔癌适当治疗和控制的主要障碍。本研究的目的是设计一种使用概率神经网络和广义回归神经网络(PNN/GRNN)的数据挖掘模型,用于早期检测和预防口腔恶性肿瘤。该模型使用具有35个属性和1025条记录的口腔癌数据库构建。所有与临床症状和病史相关的属性都被用于对恶性和非恶性病例进行分类。随后,该模型试图借助与症状、大体检查和检查相关的属性来预测特定类型的癌症、其分期和范围。此外,该模型设想根据治疗和随访细节预测患者的生存率。最后,将PNN/GRNN模型的性能与其他分类模型进行比较。PNN/GRNN模型的分类准确率为80%,因此在早期检测和预防口腔癌方面表现更好。