核梭杆菌
医学
结直肠癌
肠道菌群
结肠镜检查
毛螺菌科
梭杆菌
胃肠病学
内科学
粪便
乙状结肠镜检查
消化链球菌
病理
癌症
生物
免疫学
厌氧菌
16S核糖体RNA
微生物学
拟杆菌
牙周炎
厚壁菌
细菌
牙龈卟啉单胞菌
遗传学
作者
Nielson T. Baxter,Mack T. Ruffin,Mary A.M. Rogers,Patrick D. Schloss
标识
DOI:10.1186/s13073-016-0290-3
摘要
Colorectal cancer (CRC) is the second leading cause of death among cancers in the United States. Although individuals diagnosed early have a greater than 90 % chance of survival, more than one-third of individuals do not adhere to screening recommendations partly because the standard diagnostics, colonoscopy and sigmoidoscopy, are expensive and invasive. Thus, there is a great need to improve the sensitivity of non-invasive tests to detect early stage cancers and adenomas. Numerous studies have identified shifts in the composition of the gut microbiota associated with the progression of CRC, suggesting that the gut microbiota may represent a reservoir of biomarkers that would complement existing non-invasive methods such as the widely used fecal immunochemical test (FIT). We sequenced the 16S rRNA genes from the stool samples of 490 patients. We used the relative abundances of the bacterial populations within each sample to develop a random forest classification model that detects colonic lesions using the relative abundance of gut microbiota and the concentration of hemoglobin in stool. The microbiota-based random forest model detected 91.7 % of cancers and 45.5 % of adenomas while FIT alone detected 75.0 % and 15.7 %, respectively. Of the colonic lesions missed by FIT, the model detected 70.0 % of cancers and 37.7 % of adenomas. We confirmed known associations of Porphyromonas assaccharolytica, Peptostreptococcus stomatis, Parvimonas micra, and Fusobacterium nucleatum with CRC. Yet, we found that the loss of potentially beneficial organisms, such as members of the Lachnospiraceae, was more predictive for identifying patients with adenomas when used in combination with FIT. These findings demonstrate the potential for microbiota analysis to complement existing screening methods to improve detection of colonic lesions.
科研通智能强力驱动
Strongly Powered by AbleSci AI