Matches in SemOpenAlex for { <https://semopenalex.org/work/W2172200501> ?p ?o ?g. }
Showing items 1 to 53 of
53
with 100 items per page.
- W2172200501 abstract "Background The use of statistical methods to analyze data, regardless of their theoretical assumptions, leads to misinterpretation of the results. Objectives Effective attributes in colorectal cancer relapse were investigated through survival analysis in the present study. Comparison between the results of artificial neural network (ANN) method and Cox proportional hazards (Cox PH) model was the main purpose of this research. Patients and Methods A total of 184 patients with locoregional colorectal cancer, referred to Shahid Faghihi Hospital (Shiraz, Iran) for surgery, were followed in a five-year period for possible relapse during 2003-2011. Disease-free survival was then modeled based on the patients’ attributes, using Cox PH regression and ANN methods. All the attributes effective on disease relapse were investigated by these two methods. Results A total of 114 (62%) males and 70 (38%) females with a median age of 54 (range: 23-84) years old participated in the study. Among them, there were 95 (51.6%) patients with colon cancer and 89 (48.4%) with rectum cancer. In addition, 53 patients relapsed and 131 patients did not present any relapse or missed the follow up (censored data). The results showed that the accuracy rate in prediction was higher for the ANN method than the Cox PH model (78.2% versus 72.7%). In addition, the area under the receiver operating curve (ROC) was also more for the ANN method (0.86 versus 0.74). Five attributes of the patients, including neoadjuvant treatment, perforation and/or obstruction, perineural invasion, stage, and tumor grade, were significant through the Cox HP model. The first five attributes by the ANN method were surgeon, primary tumor site, perforation and/or obstruction, age, and adjuvant treatments. In this study, the order of attributes determined by the ANN method was rather confirmed by the physicians. Conclusions The results showed superiority of the ANN method over the Cox PH model with respect to the area under the ROC and the accuracy rate in prediction. However, this method requires a large data set to learn the relations and cannot distinguish the confounding attributes." @default.
- W2172200501 created "2016-06-24" @default.
- W2172200501 creator A5002782655 @default.
- W2172200501 creator A5021490493 @default.
- W2172200501 date "2014-09-30" @default.
- W2172200501 modified "2023-09-25" @default.
- W2172200501 title "Risk Factors for Anal Cancer" @default.
- W2172200501 cites W2011070132 @default.
- W2172200501 cites W2031915502 @default.
- W2172200501 cites W2049501909 @default.
- W2172200501 cites W2067818215 @default.
- W2172200501 doi "https://doi.org/10.17795/acr-21533" @default.
- W2172200501 hasPublicationYear "2014" @default.
- W2172200501 type Work @default.
- W2172200501 sameAs 2172200501 @default.
- W2172200501 citedByCount "0" @default.
- W2172200501 crossrefType "journal-article" @default.
- W2172200501 hasAuthorship W2172200501A5002782655 @default.
- W2172200501 hasAuthorship W2172200501A5021490493 @default.
- W2172200501 hasConcept C121608353 @default.
- W2172200501 hasConcept C126322002 @default.
- W2172200501 hasConcept C2779840525 @default.
- W2172200501 hasConcept C2779965577 @default.
- W2172200501 hasConcept C556039675 @default.
- W2172200501 hasConcept C71924100 @default.
- W2172200501 hasConcept C99454951 @default.
- W2172200501 hasConceptScore W2172200501C121608353 @default.
- W2172200501 hasConceptScore W2172200501C126322002 @default.
- W2172200501 hasConceptScore W2172200501C2779840525 @default.
- W2172200501 hasConceptScore W2172200501C2779965577 @default.
- W2172200501 hasConceptScore W2172200501C556039675 @default.
- W2172200501 hasConceptScore W2172200501C71924100 @default.
- W2172200501 hasConceptScore W2172200501C99454951 @default.
- W2172200501 hasIssue "3" @default.
- W2172200501 hasLocation W21722005011 @default.
- W2172200501 hasLocation W21722005012 @default.
- W2172200501 hasOpenAccess W2172200501 @default.
- W2172200501 hasPrimaryLocation W21722005011 @default.
- W2172200501 hasRelatedWork W1989708952 @default.
- W2172200501 hasRelatedWork W2003492254 @default.
- W2172200501 hasRelatedWork W2034455028 @default.
- W2172200501 hasRelatedWork W2102061422 @default.
- W2172200501 hasRelatedWork W2166856807 @default.
- W2172200501 hasRelatedWork W2325339263 @default.
- W2172200501 hasRelatedWork W2403421850 @default.
- W2172200501 hasRelatedWork W2588667662 @default.
- W2172200501 hasRelatedWork W4281257293 @default.
- W2172200501 hasRelatedWork W4308205286 @default.
- W2172200501 hasVolume "2" @default.
- W2172200501 isParatext "false" @default.
- W2172200501 isRetracted "false" @default.
- W2172200501 magId "2172200501" @default.
- W2172200501 workType "article" @default.