| Literature DB >> 35852835 |
Dídac Florensa1,2, Jordi Mateo-Fornés1, Francesc Solsona1, Teresa Pedrol Aige3, Miquel Mesas Julió2, Ramon Piñol4, Pere Godoy5,6,7.
Abstract
BACKGROUND: Previous works have shown that risk factors are associated with an increased likelihood of colorectal cancer.Entities:
Keywords: cancer registry; colorectal cancer; k-means; multiple correspondence analysis; risk factors
Mesh:
Year: 2022 PMID: 35852835 PMCID: PMC9346563 DOI: 10.2196/29056
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 7.076
Figure 1System flow chart. CRIP: Central Register of Insured Persons; PCR: population-based cancer registry.
Principal comorbidities groups included in this study: patients with colorectal cancer between 2012 and 2015, where all the comorbidities were properly registered (N=1083).
| Characteristics | Values, n (%) | ||
|
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| Male | 689 (63.6) | |
|
| Female | 394 (36.4) | |
|
| |||
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| 50-64 | 319 (29.5) | |
|
| 65-74 | 328 (30.3) | |
|
| ≥75 | 436 (40.2) | |
|
| |||
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| Death | 221 (20.4) | |
|
| Alive | 862 (79.6) | |
|
| |||
|
| <€18,000/year | 863 (79.7) | |
|
| >€18,000/year | 220 (20.3) | |
|
| |||
|
| Rural | 228 (21.1) | |
|
| Semiurban | 333 (30.7) | |
|
| Urban | 522 (48.2) | |
|
| |||
|
| Normal | 234 (21.6) | |
|
| Overweight | 506 (46.7) | |
|
| Obesity | 343 (31.7) | |
|
| |||
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| Smoker/Ex-smoker | 232 (21.4) | |
|
| Nonsmoker | 851 (78.6) | |
|
| |||
|
| 0 | 64 (5.9) | |
|
| I | 115 (10.6) | |
|
| II | 168 (15.5) | |
|
| III | 91 (8.4) | |
|
| Undefined | 645 (59.6) | |
a€1=US $1.04.
Figure 22D multiple correspondence analysis plot showing the correlations between the categories and their contributions for all data sets.
Figure 3Correlations between the categories by the distance between them.
Centroids of the main clusters obtained from the k-means algorithm for all data sets.
| Cluster 1 | Cluster 2 | Cluster 3 | Cluster 4 | Cluster 5 |
| Urban | Rural | Semiurban | Urban | Semiurban |
| Age ≥75 years | Age 50-64 years | Age ≥75 years | Age 65-74 years | Age 65-74 years |
| Low income | High income | Low income | Low income | Low income |
| Male | Female | Male | Male | Female |
| Nonsmoker | Nonsmoker | Nonsmoker | Smoker/Ex-smoker | Nonsmoker |
| Overweight | Normal weight | Obesity | Normal weight | Overweight |
| Alive | Alive | Death | Alive | Alive |
Figure 42D multiple correspondence analysis plot showing the correlations between the categories and their contributions.
Figure 5Correlations between the categories by the distance between them including the tumor staging.
Centroids of the main clusters obtained from the k-means algorithm: the final data set after including the stage of the tumor.
| Cluster 1 | Cluster 2 | Cluster 3 | Cluster 4 | Cluster 5 |
| Urban | Semiurban | Urban | Rural | Semiurban |
| Age 65-74 years | Age ≥75 years | Age 50-64 years | Age 65-74 years | Age ≥75 years |
| High income | Low income | Low income | Low income | Low income |
| Male | Male | Male | Male | Male |
| Nonsmoker | Nonsmoker | Nonsmoker | Nonsmoker | Nonsmoker |
| Obesity | Obesity | Overweight | Obesity | Overweight |
| Alive | Alive | Alive | Alive | Death |
| Stage II | Stage II | Stage 0 | Stage III | Stage III |