Stratification and model-based analysis of patients with Irritable Bowel Syndrome using advanced biostatistics and medical data mining techniques
Abstract
ABSTRACT
Irritable Bowel Syndrome (IBS) is characterized by symptoms that are dominated by
abdominal pain and abnormal bowel habits, as defined by the Rome criteria. The complexity
of the disorder is exemplified by the heterogeneity of symptom profiles and the number of
putative pathophysiological mechanisms. Currently it is unclear whether IBS is a multifactorial
disorder or rather a summary diagnosis for several distinct disease entities displaying similar
symptoms. This thesis aims to identify subgroups of clinical relevance by developing and
demonstrating symptom- and mechanism-based stratification approaches, as well as an
integrative analysis pipeline aiming to link different pathophysiological mechanisms.
In a clinical sample of IBS patients, as well as in subjects fulfilling IBS in a population-based
sample, symptom-based stratification yielded reproducible subgroups, characterized by
combinations of gastrointestinal, extra-intestinal somatic and psychological symptoms. In the
population-based sample this subgrouping was associated with differences in healthcare
utilization. Mechanism-based stratification, focusing on the function of the autonomic
nervous system (ANS), demonstrated altered ANS function in IBS patients compared to
healthy controls, and identified a subgroup of IBS patients with aberrant overall ANS function,
which was associated with more severe diarrhea. This thesis also introduces a stepwise
multilevel integrative analysis pipeline using network theory, which presents associations of
host-gene expression with mucosa-adherent gut microbiota as well as key IBS symptoms,
revealing distinct IBS-specific associations.
In conclusion, IBS patients show reproducible subgroups with specific profiles of a
comprehensive set of IBS related symptoms and differences in healthcare needs based on
these subgroups. Further, multivariate comparisons between IBS patients and healthy
controls aid in identifying individuals for which specific complex pathophysiological
mechanisms may be of relevance, as demonstrated by identifying a subset of IBS patients
with aberrant overall ANS function. This stratification approach could be applied to other
pathophysiological mechanisms. Our stepwise multilevel integrative analysis pipeline showed
differences in variable associations at the gut mucosal level between IBS patients and healthy
controls, and is therefore a model for further, comprehensive analysis of the complex
pathophysiology of IBS
Parts of work
I. Polster A, Van Oudenhove L, Jones M, Öhman L, Törnblom H, Simrén M. Mixture model
analysis identifies IBS subgroups characterised by specific profiles of gastrointestinal,
extraintestinal somatic and psychological symptoms. Aliment Pharmacol Ther.
2017;00:1–11. ::doi::10.1111/apt.14207 II. Polster A, Palsson OS, Törnblom H, Öhman L, Sperber AD, Whitehead WE, Simrén M.
Population-based IBS subgroups characterized by specific profiles of GI and non-GI
symptoms identified through Mixture model analysis report differences in healthcare
utilization. Submitted III. Polster A, Friberg P, Gunterberg V, Öhman L, Le Nevé B, Törnblom H, Cvijovic M, Simrén
M. Heart rate variability characteristics of patients with irritable bowel syndrome and
associations with symptoms. Neurogastroenterol Motil. 2018;e13320.
::doi::10.1111/nmo.13320 IV. Polster A, Öhman L, Tap J, Derrien M, Le Nevé B, Sundin J, Törnblom H, Cvijovic M,
Simrén M. A network model reveals distinct microbiota-host interactions in irritable
bowel syndrome. In manuscript
Degree
Doctor of Philosophy (Medicine)
University
University of Gothenburg. Sahlgrenska Academy
Institution
Inst of Medicine. Department of Internal Medicine and Clinical Nutrition
Disputation
Som för avläggande av medicinsk doktorsexamen vid Sahlgrenska akademin, Göteborgs universitet kommer att offentligen försvaras i Sahlgrens Aula, Blå stråket 5, 43145 Göteborg den 14.06.18 klockan 9.00
Date of defence
2018-06-14
annikka.polster@gu.se
annikka.polster@gmx.de
Date
2018-05-24Author
Polster, Annikka Virginia
Keywords
IBS
Data mining
Biostatistics
Integrative analysis
Subgroup analysis
Host-microbiota interaction
Mixture models
Network medicine
Heart rate variability
Publication type
Doctoral thesis
ISBN
978-91-7833-027-0 PDF
978-91-7833-028-7 Print
Language
eng