Odedra Devang, Samanta Subir, Vidyarthi Ambarish S
Department of Biotechnology, Birla Institute of Technology, Mesra, Ranchi 835215, India.
Rev Diabet Stud. 2012 Spring;9(1):55-62. doi: 10.1900/RDS.2012.9.55. Epub 2012 May 10.
The incidence of diabetes is increasing rapidly across the globe. India has the highest proportion of diabetic patients, earning it the doubtful distinction of the 'diabetes capital of the world'. Early detection of diabetes could help to prevent or postpone its onset by taking appropriate preventive measures, including the initiation of lifestyle changes. To date, early identification of prediabetes or type 2 diabetes has proven problematic, such that there is an urgent requirement for tools enabling easy, quick, and accurate diagnosis.
To develop an easy, quick, and precise tool for diagnosing early diabetes based on machine learning algorithms.
The dataset used in this study was based on the health profiles of diabetic and non-diabetic patients from hospitals in India. A novel machine learning algorithm, termed "mixture of expert", was used for the determination of a patient's diabetic state. Out of a total of 1415 subjects, 1104 were used to train the mixture of expert system. The remaining 311 data sets were reserved for validation of the algorithm. Mixture of expert was implemented in matlab to train the data for the development of the model. The model with the minimum mean square error was selected and used for the validation of the results.
Different combinations and numbers of hidden nodes and expectation maximization (EM) iterations were used to optimize the accuracy of the algorithm. The overall best accuracy of 99.36% was achieved with an iteration of 150 and 20 hidden nodes. Sensitivity, specificity, and total classification accuracy were calculated as 99.5%, 99.07%, and 99.36%, respectively. Furthermore, a graphical user interface was developed in java script such that the user can readily enter the variables and easily use the algorithm as a tool.
This study describes a highly precise machine learning prediction tool for identifying prediabetic, diabetic, and non-diabetic individuals with high accuracy. The tool could be used for large scale screening in hopsitals or diabetes prevention programs.
全球糖尿病发病率正在迅速上升。印度糖尿病患者比例最高,因而获得了“世界糖尿病之都”这一令人存疑的称号。早期发现糖尿病有助于通过采取适当的预防措施,包括改变生活方式,来预防或推迟其发病。迄今为止,对糖尿病前期或2型糖尿病的早期识别已被证明存在问题,因此迫切需要能够实现简便、快速且准确诊断的工具。
基于机器学习算法开发一种简便、快速且精确的早期糖尿病诊断工具。
本研究中使用的数据集基于印度医院糖尿病患者和非糖尿病患者的健康档案。一种名为“专家混合”的新型机器学习算法用于确定患者的糖尿病状态。在总共1415名受试者中,1104名用于训练专家混合系统。其余311个数据集留作算法验证之用。在Matlab中实现专家混合算法以训练数据来开发模型。选择具有最小均方误差的模型并用于结果验证。
使用不同的隐藏节点组合和数量以及期望最大化(EM)迭代来优化算法的准确性。在150次迭代和20个隐藏节点的情况下实现了99.36%的总体最佳准确率。敏感性、特异性和总分类准确率分别计算为99.5%、99.07%和99.36%。此外,用JavaScript开发了一个图形用户界面,以便用户可以轻松输入变量并将该算法作为工具使用。
本研究描述了一种高精度的机器学习预测工具,可用于高精度识别糖尿病前期、糖尿病和非糖尿病个体。该工具可用于医院的大规模筛查或糖尿病预防项目。