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Automated Process Incorporating Machine Learning Segmentation and Correlation of Oral Diseases with Systemic Health

机译:结合机器学习的自动过程和口腔疾病与系统健康的关联

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Imaging fluorescent disease biomarkers in tissues and skin is a non-invasive method to screen for health conditions. We report an automated process that combines intraoral fluorescent porphyrin biomarker imaging, clinical examinations and machine learning for correlation of systemic health conditions with periodontal disease. 1215 intraoral fluorescent images, from 284 consenting adults aged 18-90, were analyzed using a machine learning classifier that can segment periodontal inflammation. The classifier achieved an AUC of 0.677 with precision and recall of 0.271 and 0.429, respectively, indicating a learned association between disease signatures in collected images. Periodontal diseases were more prevalent among males (p=0.0012) and older subjects (p=0.0224) in the screened population. Physicians independently examined the collected images, assigning localized modified gingival indices (MGIs). MGIs and periodontal disease were then cross-correlated with responses to a medical history questionnaire, blood pressure and body mass index measurements, and optic nerve, tympanic membrane, neurological, and cardiac rhythm imaging examinations. Gingivitis and early periodontal disease were associated with subjects diagnosed with optic nerve abnormalities (p<0.0001) in their retinal scans. We also report significant co-occurrences of periodontal disease in subjects reporting swollen joints (p=0.0422) and a family history of eye disease (p=0.0337). These results indicate cross-correlation of poor periodontal health with systemic health outcomes and stress the importance of oral health screenings at the primary care level. Our screening process and analysis method, using images and machine learning, can be generalized for automated diagnoses and systemic health screenings for other diseases.
机译:对组织和皮肤中的荧光疾病生物标记物进行成像是筛查健康状况的非侵入性方法。我们报告了一个自动化的过程,该过程结合了口内荧光卟啉生物标志物成像,临床检查和机器学习,将系统性健康状况与牙周疾病相关联。使用可以分割牙周炎症的机器学习分类器分析了来自284位18-90岁的成年人的1215口内荧光图像。分类器的AUC为0.677,精确度和召回率分别为0.271和0.429,表明所收集图像中疾病特征之间的学习关联。在筛查人群中,男性(p = 0.0012)和老年受试者(p = 0.0224)的牙周疾病更为普遍。医师独立检查收集的图像,并分配本地化的改良牙龈指数(MGI)。然后,将MGI和牙周疾病与对病史问卷,血压和体重指数测量以及视神经,鼓膜,神经和心律影像学检查的反应相互关联。牙龈炎和早期牙周病与在视网膜扫描中诊断为视神经异常(p <0.0001)的受试者有关。我们还报告了在关节肿胀(p = 0.0422)和眼部疾病家族史(p = 0.0337)的受试者中牙周疾病的严重同时发生。这些结果表明,牙周健康状况不佳与全身健康状况之间存在相互关系,并强调了在初级保健水平进行口腔健康筛查的重要性。利用图像和机器学习,我们的筛查过程和分析方法可以推广到其他疾病的自动诊断和全身健康筛查。

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