Nagarajan R, Miller C S, Dawson D, Al-Sabbagh M, Ebersole J L
Division of Biomedical Informatics, College of Medicine, University of Kentucky, Lexington, KY, USA.
Center for Oral Health Research, College of Dentistry, University of Kentucky, Lexington, KY, USA.
J Periodontal Res. 2017 Jun;52(3):342-352. doi: 10.1111/jre.12397. Epub 2016 Jul 19.
Periodontal diseases are a major public health concern leading to tooth loss and have also been shown to be associated with several chronic systemic diseases. Smoking is a major risk factor for the development of numerous systemic diseases, as well as periodontitis. While it is clear that smokers have a significantly enhanced risk for developing periodontitis leading to tooth loss, the population varies regarding susceptibility to disease associated with smoking. This investigation focused on identifying differences in four broad sets of variables, consisting of: (i) host-response molecules; (ii) periodontal clinical parameters; (iii) antibody responses to periodontal pathogens and oral commensal bacteria; and (iv) other variables of interest, in a population of smokers with (n = 171) and without (n = 117) periodontitis.
Bayesian network structured learning (BNSL) techniques were used to investigate potential associations and cross-talk between the four broad sets of variables.
BNSL revealed two broad communities with markedly different topology between the populations of smokers, with and without periodontitis. Confidence of the edges in the resulting network also showed marked variations within and between the periodontitis and nonperiodontitis groups.
The results presented validated known associations and discovered new ones with minimal precedence that may warrant further investigation and novel hypothesis generation. Cross-talk between the clinical variables and antibody profiles of bacteria were especially pronounced in the case of periodontitis and were mediated by the antibody response profile to Porphyromonas gingivalis.
牙周疾病是导致牙齿脱落的主要公共卫生问题,并且已被证明与多种慢性全身性疾病有关。吸烟是众多全身性疾病以及牙周炎发生的主要危险因素。虽然吸烟者患导致牙齿脱落的牙周炎的风险显著增加,但人群对与吸烟相关疾病的易感性存在差异。本研究聚焦于识别四组广泛变量的差异,这些变量包括:(i)宿主反应分子;(ii)牙周临床参数;(iii)对牙周病原体和口腔共生菌的抗体反应;以及(iv)其他感兴趣的变量,研究对象为患有牙周炎(n = 171)和未患牙周炎(n = 117)的吸烟者群体。
采用贝叶斯网络结构学习(BNSL)技术来研究这四组广泛变量之间的潜在关联和相互作用。
BNSL显示,在患有和未患牙周炎的吸烟者群体之间,存在两个拓扑结构明显不同的广泛群落。所得网络中边的置信度在牙周炎组和非牙周炎组内部及之间也显示出显著差异。
所呈现的结果验证了已知关联,并发现了一些鲜有先例的新关联,这些关联可能值得进一步研究并提出新的假设。在牙周炎病例中,临床变量与细菌抗体谱之间的相互作用尤为明显,并且由针对牙龈卟啉单胞菌的抗体反应谱介导。