1. Fungal and Bacterial Loads: Noninvasive Inflammatory Bowel Disease Biomarkers for the Clinical Setting
- Author
-
F. Yáñez, L F Mayorga, Chaysavanh Manichanh, Francesc Casellas, Kathleen Machiels, Natalia Borruel, Severine Vermeire, Encarna Varela, A. Elias, Guillaume Sarrabayrouse, C. Bartoli, C. Herrera de Guise, Institut Català de la Salut, [Sarrabayrouse G, Elias A, Yáñez F, Mayorga L, Bartoli C, Herrera de Guise C] Servei de Gastroenterologia, Vall d’Hebron Institut de Recerca (VHIR), Barcelona, Spain. [Varela E, Casellas F, Borruel N, Manichanh C] Servei de Gastroenterologia, Vall d’Hebron Institut de Recerca (VHIR), Barcelona, Spain. CIBERehd, Instituto de Salud Carlos III, Madrid, Spain, and Vall d'Hebron Barcelona Hospital Campus
- Subjects
0301 basic medicine ,diagnóstico::técnicas y procedimientos diagnósticos::técnicas de laboratorio clínico::técnicas microbiológicas::técnicas bacteriológicas::carga bacteriana [TÉCNICAS Y EQUIPOS ANALÍTICOS, DIAGNÓSTICOS Y TERAPÉUTICOS] ,medicine.medical_specialty ,Physiology ,Otros calificadores::/diagnóstico [Otros calificadores] ,Digestive System Diseases::Gastrointestinal Diseases::Gastroenteritis::Inflammatory Bowel Diseases::Crohn Disease [DISEASES] ,Disease ,Biochemistry ,Microbiology ,Inflammatory bowel disease ,Gastroenterology ,03 medical and health sciences ,0302 clinical medicine ,inflammatory bowel disease ,Internal medicine ,Other subheadings::/diagnosis [Other subheadings] ,Genetics ,medicine ,Intestins - Microbiologia ,Microbiome ,Diagnosis::Prognosis [ANALYTICAL, DIAGNOSTIC AND THERAPEUTIC TECHNIQUES, AND EQUIPMENT] ,diagnóstico::pronóstico [TÉCNICAS Y EQUIPOS ANALÍTICOS, DIAGNÓSTICOS Y TERAPÉUTICOS] ,Molecular Biology ,Ecology, Evolution, Behavior and Systematics ,Feces ,Receiver operating characteristic ,diagnosis and prognosis ,business.industry ,prediction ,medicine.disease ,Ulcerative colitis ,QR1-502 ,Pathophysiology ,enfermedades del sistema digestivo::enfermedades gastrointestinales::gastroenteritis::enfermedad inflamatoria intestinal::enfermedad de Crohn [ENFERMEDADES] ,Computer Science Applications ,machine learning algorithm ,030104 developmental biology ,Diagnosis::Diagnostic Techniques and Procedures::Clinical Laboratory Techniques::Microbiological Techniques::Bacteriological Techniques::Bacterial Load [ANALYTICAL, DIAGNOSTIC AND THERAPEUTIC TECHNIQUES, AND EQUIPMENT] ,Modeling and Simulation ,microbial load ,Crohn’s disease and ulcerative colitis ,030211 gastroenterology & hepatology ,Calprotectin ,Intestins - Inflamació ,Intestins - Malalties - Prognosi ,business ,Research Article - Abstract
Malaltia inflamatòria intestinal; Càrrega microbiana; Predicció Enfermedad inflamatoria intestinal; Carga microbiana; Predicción Inflammatory bowel disease; Microbial load; Prediction Microbiome sequence data have been used to characterize Crohn's disease (CD) and ulcerative colitis (UC). Based on these data, we have previously identified microbiomarkers at the genus level to predict CD and CD relapse. However, microbial load was underexplored as a potential biomarker in inflammatory bowel disease (IBD). Here, we sought to study the use of fungal and bacterial loads as biomarkers to detect both CD and UC and CD and UC relapse. We analyzed the fecal fungal and bacterial loads of 294 stool samples obtained from 206 participants using real-time PCR amplification of the ITS2 region and the 16S rRNA gene, respectively. We combined the microbial data with demographic and standard laboratory data to diagnose ileal or ileocolonic CD and UC and predict disease relapse using the random forest algorithm. Fungal and bacterial loads were significantly different between healthy relatives of IBD patients and nonrelated healthy controls, between CD and UC patients in endoscopic remission, and between UC patients in relapse and non-UC individuals. Microbial load data combined with demographic and standard laboratory data improved the performance of the random forest models by 18%, reaching an average area under the receiver operating characteristic curve (AUC) of 0.842 (95% confidence interval [CI], 0.65 to 0.98), for IBD diagnosis and enhanced CD and UC discrimination and CD and UC relapse prediction. Our findings show that fecal fungal and bacterial loads could provide physicians with a noninvasive tool to discriminate disease subtypes or to predict disease flare in the clinical setting. IMPORTANCE Next-generation sequence data analysis has allowed a better understanding of the pathophysiology of IBD, relating microbiome composition and functions to the disease. Microbiome composition profiling may provide efficient diagnosis and prognosis tools in IBD. However, the bacterial and fungal loads of the fecal microbiota are underexplored as potential biomarkers of IBD. Ulcerative colitis (UC) patients have higher fecal fungal and bacterial loads than patients with ileal or ileocolonic CD. CD patients who relapsed harbor more-unstable fungal and bacterial loads than those of relapsed UC patients. Fecal fungal and bacterial load data improved prediction performance by 18% for IBD diagnosis based solely on clinical data and enhanced CD and UC discrimination and prediction of CD and UC relapse. Combined with existing laboratory biomarkers such as fecal calprotectin and C-reactive protein (CRP), microbial loads may improve the diagnostic accuracy of IBD and of ileal CD and UC disease activity and prediction of UC and ileal CD clinical relapse. This work was funded by Instituto de Salud Carlos III, grant PI17/00614, cofinanced by the European Regional Development Fund (ERDF) and by the PERIS (SLT002/16). F. Casellas has received research funding from AbbVie, Ferring, MSD, Shire, and Zambon and speaker fees from AbbVie, Chiesi, Ferring, Gebro, MSD, Shire, Takeda, and Zambon. S. Vermeire has received grant support from AbbVie, MSD, Pfizer, J&J, and Takeda; received speaker fees from AbbVie, MSD, Takeda, Ferring, Dr. Falk Pharma, Hospira, Pfizer Inc., and Tillots; and served as a consultant for AbbVie, MSD, Takeda, Ferring, Genentech/Roche, Robarts clinical trials, Gilead, Celgene, Prometheus, Avaxia, Prodigest, Shire, Pfizer Inc, Galapagos, Mundipharma, Hospira, Celgene, Second Genome, and Janssen. C. Manichanh has received financial support for research from Danone.
- Published
- 2021