Harvard/MIT Health Science and Technology Institute, Cambridge, Massachusetts, United States of America.
PLoS One. 2012;7(6):e39242. doi: 10.1371/journal.pone.0039242. Epub 2012 Jun 29.
Pediatric inflammatory bowel disease (IBD) is challenging to diagnose because of the non-specificity of symptoms; an unequivocal diagnosis can only be made using colonoscopy, which clinicians are reluctant to recommend for children. Diagnosis of pediatric IBD is therefore frequently delayed, leading to inappropriate treatment plans and poor outcomes. We investigated the use of 16S rRNA sequencing of fecal samples and new analytical methods to assess differences in the microbiota of children with IBD and other gastrointestinal disorders.
METHODOLOGY/PRINCIPAL FINDINGS: We applied synthetic learning in microbial ecology (SLiME) analysis to 16S sequencing data obtained from i) published surveys of microbiota diversity in IBD and ii) fecal samples from 91 children and young adults who were treated in the gastroenterology program of Children's Hospital (Boston, USA). The developed method accurately distinguished control samples from those of patients with IBD; the area under the receiver-operating-characteristic curve (AUC) value was 0.83 (corresponding to 80.3% sensitivity and 69.7% specificity at a set threshold). The accuracy was maintained among data sets collected by different sampling and sequencing methods. The method identified taxa associated with disease states and distinguished patients with Crohn's disease from those with ulcerative colitis with reasonable accuracy. The findings were validated using samples from an additional group of 68 patients; the validation test identified patients with IBD with an AUC value of 0.84 (e.g. 92% sensitivity, 58.5% specificity).
CONCLUSIONS/SIGNIFICANCE: Microbiome-based diagnostics can distinguish pediatric patients with IBD from patients with similar symptoms. Although this test can not replace endoscopy and histological examination as diagnostic tools, classification based on microbial diversity is an effective complementary technique for IBD detection in pediatric patients.
儿科炎症性肠病(IBD)的症状不具特异性,因此难以诊断;只有通过结肠镜检查才能明确诊断,但临床医生不愿意推荐给儿童使用。因此,儿科 IBD 的诊断经常被延误,导致治疗方案不当和预后不良。我们研究了粪便样本 16S rRNA 测序和新的分析方法在诊断儿童 IBD 和其他胃肠道疾病中的应用。
方法/主要发现:我们应用微生物生态学中的综合学习(SLiME)分析方法,对 i)IBD 微生物组多样性的已发表调查和 ii)91 名在波士顿儿童医院胃肠病学项目中接受治疗的儿童和年轻人的粪便样本的 16S 测序数据进行了分析。该方法能够准确区分对照组和 IBD 患者样本;接受者操作特征曲线(ROC)下的面积(AUC)值为 0.83(设定阈值时,对应 80.3%的敏感性和 69.7%的特异性)。该方法在不同采样和测序方法收集的数据集中保持准确性。该方法确定了与疾病状态相关的分类群,并能以合理的准确度区分克罗恩病和溃疡性结肠炎患者。使用来自另外 68 名患者的样本进行验证,验证测试的 AUC 值为 0.84(例如,92%的敏感性,58.5%的特异性)。
结论/意义:基于微生物组的诊断方法可以区分患有 IBD 的儿科患者和具有相似症状的患者。虽然这种测试不能替代内镜检查和组织学检查作为诊断工具,但基于微生物多样性的分类是 IBD 检测的有效补充技术。