Nguyen Hung T, Ghevondian Nejhdeh, Jones Timothy W
Key Univ. Res. Centre for Health Technol., Univ. of Technol., Sydney, NSW, Australia.
Conf Proc IEEE Eng Med Biol Soc. 2006;2006:6053-6. doi: 10.1109/IEMBS.2006.259482.
The most common and highly feared adverse effect of intensive insulin therapy in patients with diabetes is the increased risk of hypoglycemia. Symptoms of hypoglycemia arise from the activation of the autonomous central nervous systems and from reduced cerebral glucose consumption. HypoMon is a non-invasive monitor that measures some physiological parameters continuously to provide detection of hypoglycemic episodes in Type 1 diabetes mellitus patients (T1DM). Based on heart rate, corrected QT interval of the ECG signal and skin impedance, a neural network detection algorithm has been developed to recognize the presence of hypoglycemic episodes. From a clinical study of 21 children with T1DM, associated with hypoglycemic episodes, their heart rates increased (1.16 +/- 0.16 vs. 1.03 +/- 0.11, P<0.0001), their corrected QT intervals increased (1.09 +/- 0.09 vs. 1.02 +/- 0.07, P<0.0001) and their skin impedances reduced significantly (0.66 +/- 0.19 vs. 0.82 +/- 0.21, P<0.0001). The overall data were obtained and grouped into a training set, a validation set and a test set, each with 7 patients randomly selected. Using a feedforward multi-layer neural network with 9 hidden nodes, and an algorithm developed from the training set and the validation set, a sensitivity of 0.9516 and specificity of 0.4142 were achieved for the test set. A more advanced neural network algorithm will be developed to improve the specificity of test sets in the near future.
强化胰岛素治疗糖尿病患者时,最常见且令人高度恐惧的不良反应是低血糖风险增加。低血糖症状源于自主中枢神经系统的激活以及脑葡萄糖消耗减少。HypoMon是一种非侵入性监测仪,可连续测量一些生理参数,以检测1型糖尿病(T1DM)患者的低血糖发作。基于心率、心电图信号的校正QT间期和皮肤阻抗,已开发出一种神经网络检测算法来识别低血糖发作的存在。在一项对21名伴有低血糖发作的T1DM儿童的临床研究中,他们的心率增加(1.16±0.16对1.03±0.11,P<0.0001),校正QT间期增加(1.09±0.09对1.02±0.07,P<0.0001),皮肤阻抗显著降低(0.66±0.19对0.82±0.21,P<0.0001)。获取总体数据并将其分为训练集、验证集和测试集,每组随机选择7名患者。使用具有9个隐藏节点的前馈多层神经网络以及从训练集和验证集开发的算法,测试集的灵敏度达到0.9516,特异性达到0.4142。在不久的将来将开发更先进的神经网络算法以提高测试集的特异性。