光谱学与光谱分析
光譜學與光譜分析
광보학여광보분석
SPECTROSCOPY AND SPECTRAL ANALYSIS
2014年
5期
1327-1331
,共5页
李飞%王贻坤%朱灵%张元志%计敏%张龙%刘勇%王安
李飛%王貽坤%硃靈%張元誌%計敏%張龍%劉勇%王安
리비%왕이곤%주령%장원지%계민%장룡%류용%왕안
医用光学%神经网络%模式识别%晚期糖基化终末产物%荧光光谱%糖尿病
醫用光學%神經網絡%模式識彆%晚期糖基化終末產物%熒光光譜%糖尿病
의용광학%신경망락%모식식별%만기당기화종말산물%형광광보%당뇨병
Medical optics%Neural network%Pattern recognition%Advanced glycation end products%Fluorescence spectrum%Diabetes mellitus
晚期糖基化终末产物在人体皮肤组织中的浓度与高血糖水平密切相关,且具有自发荧光特性。使用自行研制的光学无创检测装置对人体皮肤组织的自体荧光光谱进行测量,建立神经网络模式识别模型对检测对象患有糖尿病的可能性进行风险评估。利用检测装置获取荧光光谱后对光谱数据进行主成分分析,选取前4个主成分作为光谱的特征,建立一个具有4个输入层节点、6个隐层节点、1个输出节点的神经网络模式识别模型。选取在安徽省立医院测量的487例对象数据训练该模型,以70%数据作为训练集,15%数据作为验证集,15%数据作为测试集。模型可给出测试对象罹患糖尿病的风险,或直接给出是否糖尿病的判断。结果显示该模型的受试者工作特性曲线的线下面积为0.81,标准误差为0.02;以模型输出0.5为分类界限时的敏感性为72.4%,特异性为77.6%,整体准确率为74.9%。本研究首次提出使用皮肤组织自体荧光结合神经网络模式识别模型对糖尿病进行无创风险评估,实验结果表明该方法的筛查效果优于目前常用的空腹静脉血浆血糖值法和糖化血红蛋白法。
晚期糖基化終末產物在人體皮膚組織中的濃度與高血糖水平密切相關,且具有自髮熒光特性。使用自行研製的光學無創檢測裝置對人體皮膚組織的自體熒光光譜進行測量,建立神經網絡模式識彆模型對檢測對象患有糖尿病的可能性進行風險評估。利用檢測裝置穫取熒光光譜後對光譜數據進行主成分分析,選取前4箇主成分作為光譜的特徵,建立一箇具有4箇輸入層節點、6箇隱層節點、1箇輸齣節點的神經網絡模式識彆模型。選取在安徽省立醫院測量的487例對象數據訓練該模型,以70%數據作為訓練集,15%數據作為驗證集,15%數據作為測試集。模型可給齣測試對象罹患糖尿病的風險,或直接給齣是否糖尿病的判斷。結果顯示該模型的受試者工作特性麯線的線下麵積為0.81,標準誤差為0.02;以模型輸齣0.5為分類界限時的敏感性為72.4%,特異性為77.6%,整體準確率為74.9%。本研究首次提齣使用皮膚組織自體熒光結閤神經網絡模式識彆模型對糖尿病進行無創風險評估,實驗結果錶明該方法的篩查效果優于目前常用的空腹靜脈血漿血糖值法和糖化血紅蛋白法。
만기당기화종말산물재인체피부조직중적농도여고혈당수평밀절상관,차구유자발형광특성。사용자행연제적광학무창검측장치대인체피부조직적자체형광광보진행측량,건립신경망락모식식별모형대검측대상환유당뇨병적가능성진행풍험평고。이용검측장치획취형광광보후대광보수거진행주성분분석,선취전4개주성분작위광보적특정,건립일개구유4개수입층절점、6개은층절점、1개수출절점적신경망락모식식별모형。선취재안휘성립의원측량적487례대상수거훈련해모형,이70%수거작위훈련집,15%수거작위험증집,15%수거작위측시집。모형가급출측시대상리환당뇨병적풍험,혹직접급출시부당뇨병적판단。결과현시해모형적수시자공작특성곡선적선하면적위0.81,표준오차위0.02;이모형수출0.5위분류계한시적민감성위72.4%,특이성위77.6%,정체준학솔위74.9%。본연구수차제출사용피부조직자체형광결합신경망락모식식별모형대당뇨병진행무창풍험평고,실험결과표명해방법적사사효과우우목전상용적공복정맥혈장혈당치법화당화혈홍단백법。
Advanced glycation end products (AGEs) are highly associated with hyperglycemia in human skin tissue ,and they al-so have the autofluorescence characteristic .A self-developed optical noninvasive detection device was used to measure the au-tofluorescence in human skin tissue ,and then a neural network pattern recognition model was used to assess the risk of diabetes mellitus of the subject under survey .After the fluorescence spectra were acquired and processed with principal component analy-sis ,four of the leading principal components were chosen to represent a whole spectrum .The established neural network pattern recognition model has 4 input nodes ,6 hidden nodes and 1 output node .A dataset consisting of 487 cases collected in Anhui Pro-vincial Hospital was used to train the model .Seventy percent cases were used as the training set ,15% as the validation set and 15% as the test set .The model can output subject’s risk of diabetes mellitus ,or a dichotomous judgment .Receiver operating characteristic curve can be drawn with the area under curve of 0.81 ,with standard error of 0.02 .When using 0.5 as the thresh-old between diabetes mellitus and non-diabetes mellitus ,the sensitivity and specificity of this model is 72.4% and 77.6% respec-tively ,and the overall accuracy is 74.9% .The method using human skin autofluorescence spectrum combined with neural net-work pattern recognition model is proposed for the first time ,and the results show that this method has a better screening effect compared with currently used fasting plasma glucose and HbA 1c .