Predictive model for survival in patients with gastric cancer

Background and aim: Gastric cancer is one of the most prevalent cancers in the world. Characterized by poor prognosis, it is a frequent cause of cancer in Iran. The aim of the study was to design a predictive model of survival time for patients suffering from gastric cancer. Methods: This was a h...

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Main Authors: Ladan Goshayeshi, Benyamin Hoseini, Zahra Yousefli, Alireza Khooie, Kobra Etminani, Abbas Esmaeilzadeh, Amin Golabpour
Format: Article
Language:English
Published: Electronic Physician 2017-12-01
Series:Electronic Physician
Subjects:
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5843431/
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author Ladan Goshayeshi
Benyamin Hoseini
Zahra Yousefli
Alireza Khooie
Kobra Etminani
Abbas Esmaeilzadeh
Amin Golabpour
author_facet Ladan Goshayeshi
Benyamin Hoseini
Zahra Yousefli
Alireza Khooie
Kobra Etminani
Abbas Esmaeilzadeh
Amin Golabpour
author_sort Ladan Goshayeshi
collection DOAJ
description Background and aim: Gastric cancer is one of the most prevalent cancers in the world. Characterized by poor prognosis, it is a frequent cause of cancer in Iran. The aim of the study was to design a predictive model of survival time for patients suffering from gastric cancer. Methods: This was a historical cohort conducted between 2011 and 2016. Study population were 277 patients suffering from gastric cancer. Data were gathered from the Iranian Cancer Registry and the laboratory of Emam Reza Hospital in Mashhad, Iran. Patients or their relatives underwent interviews where it was needed. Missing values were imputed by data mining techniques. Fifteen factors were analyzed. Survival was addressed as a dependent variable. Then, the predictive model was designed by combining both genetic algorithm and logistic regression. Matlab 2014 software was used to combine them. Results: Of the 277 patients, only survival of 80 patients was available whose data were used for designing the predictive model. Mean ± SD of missing values for each patient was 4.43±1.41 combined predictive model achieved 72.57% accuracy. Sex, birth year, age at diagnosis time, age at diagnosis time of patients’ family, family history of gastric cancer, and family history of other gastrointestinal cancers were six parameters associated with patient survival. Conclusion: The study revealed that imputing missing values by data mining techniques have a good accuracy. And it also revealed six parameters extracted by genetic algorithm effect on the survival of patients with gastric cancer. Our combined predictive model, with a good accuracy, is appropriate to forecast the survival of patients suffering from Gastric cancer. So, we suggest policy makers and specialists to apply it for prediction of patients’ survival.
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spelling doaj.art-fe2d8bcc5f21416388d2e38dfef97dec2022-12-21T23:59:25ZengElectronic PhysicianElectronic Physician2008-58422008-58422017-12-019126035604210.19082/6035Predictive model for survival in patients with gastric cancerLadan GoshayeshiBenyamin HoseiniZahra YousefliAlireza KhooieKobra EtminaniAbbas EsmaeilzadehAmin GolabpourBackground and aim: Gastric cancer is one of the most prevalent cancers in the world. Characterized by poor prognosis, it is a frequent cause of cancer in Iran. The aim of the study was to design a predictive model of survival time for patients suffering from gastric cancer. Methods: This was a historical cohort conducted between 2011 and 2016. Study population were 277 patients suffering from gastric cancer. Data were gathered from the Iranian Cancer Registry and the laboratory of Emam Reza Hospital in Mashhad, Iran. Patients or their relatives underwent interviews where it was needed. Missing values were imputed by data mining techniques. Fifteen factors were analyzed. Survival was addressed as a dependent variable. Then, the predictive model was designed by combining both genetic algorithm and logistic regression. Matlab 2014 software was used to combine them. Results: Of the 277 patients, only survival of 80 patients was available whose data were used for designing the predictive model. Mean ± SD of missing values for each patient was 4.43±1.41 combined predictive model achieved 72.57% accuracy. Sex, birth year, age at diagnosis time, age at diagnosis time of patients’ family, family history of gastric cancer, and family history of other gastrointestinal cancers were six parameters associated with patient survival. Conclusion: The study revealed that imputing missing values by data mining techniques have a good accuracy. And it also revealed six parameters extracted by genetic algorithm effect on the survival of patients with gastric cancer. Our combined predictive model, with a good accuracy, is appropriate to forecast the survival of patients suffering from Gastric cancer. So, we suggest policy makers and specialists to apply it for prediction of patients’ survival.https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5843431/Gastric CancerSurvivalMissing ValuePredictive Model
spellingShingle Ladan Goshayeshi
Benyamin Hoseini
Zahra Yousefli
Alireza Khooie
Kobra Etminani
Abbas Esmaeilzadeh
Amin Golabpour
Predictive model for survival in patients with gastric cancer
Electronic Physician
Gastric Cancer
Survival
Missing Value
Predictive Model
title Predictive model for survival in patients with gastric cancer
title_full Predictive model for survival in patients with gastric cancer
title_fullStr Predictive model for survival in patients with gastric cancer
title_full_unstemmed Predictive model for survival in patients with gastric cancer
title_short Predictive model for survival in patients with gastric cancer
title_sort predictive model for survival in patients with gastric cancer
topic Gastric Cancer
Survival
Missing Value
Predictive Model
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5843431/
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AT alirezakhooie predictivemodelforsurvivalinpatientswithgastriccancer
AT kobraetminani predictivemodelforsurvivalinpatientswithgastriccancer
AT abbasesmaeilzadeh predictivemodelforsurvivalinpatientswithgastriccancer
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