| Literature DB >> 34966694 |
Siti Maryam Ahmad Kendong1,2, Raja Affendi Raja Ali3,4, Khairul Najmi Muhammad Nawawi3,4, Hajar Fauzan Ahmad5,6, Norfilza Mohd Mokhtar1,4.
Abstract
Colorectal cancer (CRC) is a heterogeneous disease that commonly affects individuals aged more than 50 years old globally. Regular colorectal screening, which is recommended for individuals aged 50 and above, has decreased the number of cancer death toll over the years. However, CRC incidence has increased among younger population (below 50 years old). Environmental factors, such as smoking, dietary factor, urbanization, sedentary lifestyle, and obesity, may contribute to the rising trend of early-onset colorectal cancer (EOCRC) because of the lack of genetic susceptibility. Research has focused on the role of gut microbiota and its interaction with epithelial barrier genes in sporadic CRC. Population with increased consumption of grain and vegetables showed high abundance of Prevotella, which reduces the risk of CRC. Microbes, such as Fusobacterium nucleatum, Bacteroides fragilis and Escherichia coli deteriorate in the intestinal barrier, which leads to the infiltration of inflammatory mediators and chemokines. Gut dysbiosis may also occur following inflammation as clearly observed in animal model. Both gut dysbiosis pre- or post-inflammatory process may cause major alteration in the morphology and functional properties of the gut tissue and explain the pathological outcome of EOCRC. The precise mechanism of disease progression from an early stage until cancer establishment is not fully understood. We hypothesized that gut dysbiosis, which may be influenced by environmental factors, may induce changes in the genome, metabolome, and immunome that could destruct the intestinal barrier function. Also, the possible underlying inflammation may give impact microbial community leading to disruption of physical and functional role of intestinal barrier. This review explains the potential role of the interaction among host factors, gut microenvironment, and gut microbiota, which may provide an answer to EOCRC.Entities:
Keywords: colorectal cancer; early onset; host microbial interaction; microbiota; tight junction proteins
Mesh:
Year: 2021 PMID: 34966694 PMCID: PMC8710575 DOI: 10.3389/fcimb.2021.744606
Source DB: PubMed Journal: Front Cell Infect Microbiol ISSN: 2235-2988 Impact factor: 5.293
Recent published studies on the potential risk factors for EOCRC.
| Potential Risk Factors | Study | Country | Study Design | Participants | Comments (positive association) | Comments (no or inverse association) |
|---|---|---|---|---|---|---|
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| Canada | Population-based case control study | 175 EOCRC | OR for EOCRC in: | |
| 253 controls |
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| a) overweight: 0.57 (0.34-0.94) | ||||||
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| b) obese: 0.59 (0.34-1.01) | ||||||
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| – | Systematic review & meta-analysis | 7 studies | Pooled RR for EOCRC: 1.54 (1.01-2.35) | OR for EOCRC in: | |
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| USA | Case-control study of US Veterans who underwent colonoscopy | 651 EOCRC | |||
| 67,416 controls |
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a) overweight: 0.69 (0.56-0.87) b) obese: 0.69 (0.55-0.86) | ||||||
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| USA | Retrospective, single centre cohort | 269 EOCRC |
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| 2,802 late-onset CRC | Compared with controls, OR: 0.98 (0.95-1.00) | |||||
| 1,122 controls | Compared with late-onset CRC, OR: 0.98 (0.95-0.99) | |||||
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| USA | Population-based cohort analysis (National Database- Explorys) | Definition of EOCRC: 20-39 years of age | Compared with no CRC, OR for EOCRC: 1.82 (1.62-2.04) |
| |
| EOCRC rate: 18.9/100,000 | Compared with late-onset CRC, OR for EOCRC: 0.7 (0.62-0.8) | |||||
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| USA | Prospective cohort study (The Nurses’ Health Study II) | 85,256 women free of cancer and inflammatory bowel disease at enrolment 114 EOCRC | Compared with women with normal BMI, RR for EOCRC: | ||
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a) BMI 25-29.9: 1.37 (0.81-2.30) b) BMI >30: 1.93 (1.15-3.25) | ||||||
| compared with women with weight gain <5kg, RR for EOCRC: | ||||||
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a) weight gain 20-39.9kg: 1.65 (0.96-2.81) b) weight gain >40kg: 2.15 (1.01-4.55) | ||||||
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| USA | Population-based cohort analysis (National Database- Explorys) | 68,860 total CRC cases. | Compared with late-onset CRC, OR for EOCRC: 1.14 (1.08-1.20) | ||
| 5,710 EOCRC | Compared with control group, OR for EOCRC: 2.88 (2.74-3.04) | |||||
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| – | Meta-analysis of 13 population-based studies. | 3,767 EOCRC | Pooled OR (heavy alcohol consumption): 1.25 (1.04-1.50) | Pooled OR (alcohol abstinence): 1.23 (1.08-1.39) |
| 4,049 controls | ||||||
| 23,437 late-onset CRC 35,311 older controls | ||||||
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| Canada | Population-based case control study | 175 EOCRC |
| ||
| 253 controls | OR for EOCRC in daily consumption: 1.07 (0.49-2.32) | |||||
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| Systematic review & meta-analysis | 3 studies | Pooled RR for EOCRC: 1.71 (1.62-1.80) | |||
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| USA | Population-based cohort analysis (National Database- Explorys) | Definition of EOCRC: 20-39 years of age |
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| EOCRC rate: 18.9/100,000 | Compared with no CRC, OR for EOCRC: 0.91 (0.66-1.25) | |||||
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| Compared with late-onset CRC, OR for EOCRC: 0.72 (0.53-0.99) | ||||||
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| USA | Population-based cohort analysis (National Database- Explorys) | 68,860 total CRC cases |
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| 5,710 EOCRC. | Compared with late-onset CRC, OR for EOCRC: 0.83 (0.78-0.88) | |||||
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| – | Meta-analysis of 13 population-based studies. | 3,767 EOCRC |
| |
| 4,049 controls | OR: 0.96 (0.92-1.01) | |||||
| 23,437 late-onset CRC 35,311 older controls | ||||||
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| Canada | Population-based case control study | 175 EOCRC |
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| 253 controls | OR for EOCRC in heavy smoker: 0.79 (0.40-1.57) | |||||
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| Systematic review & meta-analysis | 20 studies |
| |||
| Pooled RR for EOCRC: 1.35 (0.81-2.25) | ||||||
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| USA | Case-control study of US Veterans who underwent colonoscopy | 651 EOCRC |
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| 67,416 controls | OR for EOCRC in current smoker: 1.10 (0.89-1.35) | |||||
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| USA | Population based cohort analysis (National Database- Explorys) | Definition of EOCRC: 20-39 years of age | Compared with no CRC, OR for EOCRC: 2.68 (2.41-2.97) | ||
| EOCRC rate: 18.9/100,000 | Compared with late-onset CRC, OR for EOCRC: 1.19 (1.07-1.32) | |||||
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| Australia | Retrospective population-based cohort | 713,085 EOCRC | OR: 2.02 (1.73-2.35) | ||
| 306,329 late-onset CRC | ||||||
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| USA | Population-based cohort analysis (National Database- Explorys) | 68,860 total CRC cases. 5,710 were EOCRC. |
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| Compared with late-onset CRC, OR for EOCRC: 0.83 (0.79-0.88) | ||||||
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| Canada | Population-based case control study | 175 EOCRC | OR for EOCRC (family history of CRC): 2.37 (1.47-3.84) | |
| 253 controls | ||||||
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| Systematic review & meta-analysis | 20 studies | Pooled RR for EOCRC (family history of CRC): 4.21 (2.61-6.79) | |||
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| USA | Retrospective, single centre cohort | 269 EOCRC | Compared with controls, OR (family history of CRC): 8.61 (4.83-15.75) | ||
| 2,802 late-onset CRC | Compared with late-onset CRC, OR: 2.87 (1.89-4.25) | |||||
| 1,122 controls | ||||||
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| Australia | Retrospective population-based cohort | 713,085 EOCRC, | OR: 3.6 (2.95-4.41) | ||
| 306,329 late-onset CRC | ||||||
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| USA | Population-based cohort analysis (National Database- Explorys) | Definition of EOCRC: 20-39 years of age | Compared with controls, OR for EOCRC: 49.26 (42.50-57.08) | ||
| EOCRC rate: 18.9/100,000 | Compared with late-onset CRC, OR for EOCRC: 3.6 (2.69-4.80) | |||||
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| USA | Population-based cohort analysis (National Database- Explorys) | 68,860 total CRC cases | Compared with late-onset CRC, OR for EOCRC: 1.78 (1.67-1.90) | ||
| 5,710 EOCRC | Compared with controls, OR for EOCRC: 11.66 (10.97-12.39) | |||||
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| USA | Retrospective, single centre cohort | 269 EOCRC | EOCRC in IBD vs controls: 3% vs 0.4%, p<0.01 | |
| 2,802 late-onset CRC | Compared with late-onset CRC, OR: 2.97 (1.16-6.63) | |||||
| 1,122 controls | ||||||
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| 3 UC, 4 CD | ||||||
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| 6 UC, 21 CD | ||||||
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| 1 UC,4 CD | ||||||
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| – | Meta-analysis of 13 population-based studies. | 3,767 EOCRC |
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| 4,049 controls | OR: 1.25 (0.93-1.68) | |||||
| 23,437 late-onset CRC 35,311 older controls | ||||||
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| Canada | Population-based case control study | 175 EOCRC |
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| 253 controls | OR: 1.75 (0.57-5.32) | |||||
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| Australia | Prospective cohort study from The South Australian Young Onset Colorectal Polyp and Cancer Study (SAYO) | 90 EOCRC (defined as patients < 55 years of age) 240 controls | OR: 4.4 (2.0-9.7) | ||
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| Germany | Population-based cohort study | 101,135 diabetic patients | 1.9-fold increased risk of EOCRC in diabetic patients. | ||
| 10,698 EOCRC | 6.9-fold increased risk of EOCRC in diabetic patient with family history of CRC. | |||||
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| USA | Retrospective, single centre cohort | 269 EOCRC |
| ||
| 2,802 late-onset CRC | EOCRC vs controls: Univariate P: 0.48 | |||||
| 1,122 controls | ||||||
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| USA | Population-based cohort analysis (National Database- Explorys) | Definition of EOCRC: 20-39 years of age | Compared with controls, OR: 19.80 (18.14-21.60) | ||
| EOCRC rate: 18.9/100,000 |
BMI, body mass index; CRC, colorectal cancer; CD, Crohn’s disease; EOCRC, early-onset colorectal cancer; IBD, inflammatory bowel disease; OR, odd ratio; RR, relative risk; UC, ulcerative colitis; USA, United State of America.
Recent published studies on the dietary factors for EOCRC.
| Potential Dietary Factors | Study | Country | Study Design | Participants | Comments (positive association) | Comments (no or inverse association) |
|---|---|---|---|---|---|---|
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| Canada | Population-based case control study | 175 EOCRC |
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| 253 controls | OR (>3 vegetable servings/day): 0.52 (0.26-1.07) | OR (>3 fruit servings/day): 0.95 (0.49-1.85) | ||||
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| Italy and Switzerland | Case control study | 329 EOCRC 1,361 controls |
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| OR (high vegetable intake): 0.40 (0.28-0.56) | ||||||
| OR (high citrus fruit intake): 0.61 (0.45-0.84) | ||||||
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| Canada | Population-based case control study | 175 EOCRC |
| |
| 253 controls | OR (>3 servings/day): 1.45 (0.75-2.80) | |||||
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| – | Meta-analysis of 13 population-based studies. | 3,767 EOCRC | OR: 1.10 (1.04-1.16) | |
| 4,049 controls | ||||||
| 23,437 late-onset CRC | ||||||
| 35,311 older controls | ||||||
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| Canada | Population-based case control study | 175 EOCRC |
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| 253 controls | OR (>5 servings/week): 1.06 (0.56-1.98) | |||||
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| Italy and Switzerland | Case control study | 329 EOCRC 1,361 controls |
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| OR (high intake): 1.07 (0.79-1.47) | ||||||
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| – | Meta-analysis of 13 population-based studies | 3,767 EOCRC |
| |
| 4,049 controls | OR: 1.03 (0.95-1.12) | |||||
| 23,437 late-onset CRC | ||||||
| 35,311 older controls | ||||||
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| Canada | Population-based case control study | 175 EOCRC |
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| 253 controls | OR (>3 servings/week): 1.23 (0.62-2.42) | |||||
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| Italy and Switzerland | Case control study | 329 EOCRC 1,361 controls | OR (high intake): 1.56 (1.11-2.20) | ||
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| – | Meta-analysis of 13 population-based studies. | 3,767 EOCRC |
| ||
| 4,049 controls | OR: 1.03 (0.95-1.12) | |||||
| 23,437 late-onset CRC | ||||||
| 35,311 older controls | ||||||
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| Canada | Population-based case control study | 175 EOCRC | OR (>7 drinks/week): 2.99 (1.57-5.68) | |
| 253 controls | ||||||
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| Canada | Population-based case control study | 175 EOCRC | OR: 1.92 (1.01-3.66) | |
| 253 controls | ||||||
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| Canada | Population-based case control study | 175 EOCRC |
| |
| 253 controls | OR: 0.53 (0.31-0.92) | |||||
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| Italy and Switzerland | Case control study | 329 EOCRC 1,361 controls |
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| OR: 0.91 (0.64-1.29) | ||||||
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| Italy and Switzerland | Case control study | 329 EOCRC 1,361 controls |
| |
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| OR: 0.52 (0.37-0.72) | |||||
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| OR: 0.68 (0.49-0.94) | |||||
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| OR: 0.38 (0.26-0.58) | |||||
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| OR: 0.59 (0.40-0.86) |
CRC, colorectal cancer; EOCRC, early-onset colorectal cancer; OR, odd ratio.
Recent published studies on germline mutations in EOCRC patients.
| Published studies | Country | Study Design | Participants | Comments |
|---|---|---|---|---|
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| USA | Next-generation sequencing | 4,668 EOCRC | Microsatellite stable cohort: |
| 13,550 late-onset CRC | a) TP53 and CTNNB1 were more common in EOCRC | |||
| b) APC, KRAS, BRAF and FAM123B were more common in late-onset CRC | ||||
| Microsatellite instability high cohort: | ||||
| a) APC, BRAF and KRAS were more common in EOCRC | ||||
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| USA | Next-generation sequencing | 1,162 EOCRC | As compared to late-onset CRC, EOCRC more likely to have: |
| 2,583 late-onset CRC |
a) microsatellite instability (P=0.038) b) fewer BRAF V600 mutations (p<0.0001) As compared to late-onset CRC, EOCRC had higher frequency of CMS1 (22-23% vs 11%) and lower frequencies of CMS2 (43% vs 50%) and CMS4 (20-22% vs 27%). | |||
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| USA | Next-generation sequencing | 79/315 EOCRC had gene mutations associated with hereditary cancer syndrome |
a) 56 Lynch syndrome (MSH2, MLH1, MSH6, PMS2) b) 10 familial adenomatous polyposis (APC, MUTYH) c) 13 mutations in other cancer-associated genes (MUTYH, SMAD4, BRCA1, TP53, CHEK2) |
| 21/315 EOCRC had variants of uncertain significance | Only 51% of the subjects with germline mutations associated with hereditary cancer syndrome reported a family history of CRC. | |||
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| USA | Next-generation sequencing | 72/450 EOCRC had gene mutations | 48 (10.7%) had MMR-deficient tumors and 40 (83.3%) had at least 1 gene mutation: |
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a) 37 Lynch syndrome (MLH1, MLH2, MSH6, PMS2) b) 1 APC c.3920T>A, p.l1307K & PMS2 c) 9 double somatic MMR mutations d) 1 somatic MLH1 methylation 402 (89.3%) had MMR-proficient tumors and 32 (8%) had at least 1 gene mutation: a) 9 high-penetrance CRC genes (APC, APC/PMS2, MUTYH, SMAD4) b) 13 high-penetrance other cancer-associated genes (ATM, BRCA1, BRCA2, CDKN2A, PALB2) c) 10 low-penetrance CRC genes (APC c.3920T>A, p.l1307K, monoallelic MUTYH) | ||||
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| Spain | Quantitative real-time PCR | 60 EOCRC |
a) 16p13.12-p13.11 alterations were more prevalent in EOCRC (33.3% vs 16.3%). b) 100% (34/34) EOCRC showed homozygous deletion in NOMO-1 gene, as compared to late-onset CRC, 2/17 (11.7%). c) microsatellite stable EOCRC showed high proportion of homozygous deletion in NOMO-1 gene (91.5%). |
| 86 late-onset CRC | ||||
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| Spain | Array comparative genomic hybridization profiling | 60 EOCRC | Chromosomal instability profiles: |
| 86 late-onset CRC |
a) EOCRC: losses at 1p36, 1p12, 1q21, 9p13, 14q11, 16p13, 16p12 b) late-onset CRC: gains at 7q11, 7q22 | |||
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| USA | Next-generation sequencing, immunohistochemistry and PCR | 68 EOCRC (patients ≤40 years of age) | Higher proportion of EOCRC (54%) harbored KRAS mutation, independent of tumor stage. |
APC, adenomatous polyposis coli; ATM, A-T mutated; CDKN, cyclin dependent kinase inhibitor; CMS, congenital myasthenic syndromes; CRC, colorectal cancer; CTNNB, catenin beta; EOCRC, early-onset colorectal cancer; KRAS, Kirsten rat sarcoma; MLH, mutL homolog; MMR, mismatch repair; MSH, mutS homolog; MUTYH, mutY DNA glycosylase; PALB2, partner and localizer of BRCA2; PMS, postmeiotic segregration increased; SMAD, mothers against decapentaplegic; TP, tumor protein; USA, United State of America.
Figure 1The possible pathway of early-onset colorectal cancer (EOCRC). Inflammatory diet (high fat and sugar diet), endogenous N-nitroso compound (NOC), polycyclic aromatic hydrocarbons (PAH), heterocyclic amines (HCA), heme, stress, F. nucleatum and B. fragilis toxin (BFT), produced by enterotoxigenic B. fragilis (ETBF), induced inflammation through stimulation of inflammatory cytokines and causes (i) the activation of β-catenin and STAT3 signaling pathway; and the activation of transforming growth factor beta 1 (TGFB1) pathway (Nakamura et al., 2019).