Oral Health and Systemic Disease, University of Louisville, Louisville, S Preston St, Louisville, KY, 40292, USA.
Diabetol Metab Syndr. 2010 Jul 14;2:48. doi: 10.1186/1758-5996-2-48.
There is an ongoing need for improvements in non-invasive, point-of-care tools for the diagnosis and prognosis of diabetes mellitus. Ideally, such technologies would allow for community screening.
In this study, we employed infrared spectroscopy as a novel diagnostic tool in the prediction of diabetic status by analyzing the molecular and sub-molecular spectral signatures of saliva collected from subjects with diabetes (n = 39) and healthy controls (n = 22).
Spectral analysis revealed differences in several major metabolic components - lipid, proteins, glucose, thiocyanate and carboxylate - that clearly demarcate healthy and diseased saliva. The overall accuracy for the diagnosis of diabetes based on infrared spectroscopy was 100% on the training set and 88.2% on the validation set. Therefore, we have established that infrared spectroscopy can be used to generate complex biochemical profiles in saliva and identify several potential diabetes-associated spectral features.
Infrared spectroscopy may represent an appropriate tool with which to identify novel diseases mechanisms, risk factors for diabetic complications and markers of therapeutic efficacy. Further study into the potential utility of infrared spectroscopy as diagnostic and prognostic tool for diabetes is warranted.
对于糖尿病的诊断和预后,人们一直需要改进非侵入性、即时可用的工具。理想情况下,这些技术可以用于社区筛查。
在这项研究中,我们采用了红外光谱技术,通过分析来自糖尿病患者(n=39)和健康对照者(n=22)的唾液的分子和亚分子光谱特征,将其作为一种新的诊断工具用于预测糖尿病状态。
光谱分析显示,几种主要代谢成分(脂质、蛋白质、葡萄糖、硫氰酸盐和羧酸盐)存在差异,这些差异可清楚地区分健康和患病唾液。基于红外光谱的糖尿病诊断总准确率在训练集上为 100%,在验证集上为 88.2%。因此,我们已经确定,红外光谱可用于生成唾液中的复杂生化谱,并识别出几种可能与糖尿病相关的光谱特征。
红外光谱可能是一种合适的工具,可以用于识别新的疾病机制、糖尿病并发症的风险因素和治疗效果的标志物。进一步研究红外光谱作为糖尿病诊断和预后工具的潜在效用是有必要的。