Is using the Gail model to calculate the risk of breast cancer in the Venezuelan population justified?

被引:0
|
作者
del Valle Pena Colmenares, Josepmilly [1 ]
Garcia, Carmen Cristina [2 ]
Velasquez, Yazmin Jose Velasquez [1 ]
Pino, Leider Arelis Campos [1 ]
Rodriguez, Alvaro Gomez [1 ]
Rodriguez, Wladimir Jose Villegas [1 ]
Vargas, David Jose Gonzalez [3 ]
Herrera, Douglas Jose Angulo [4 ]
机构
[1] Inst Venezolano Seguro Social IVSS, Serv Patol Mamaria, Serv Oncol Hosp SOH, Caracas 1040, Venezuela
[2] Escuela Luis Razetti, Fac Med, Catedra Patol Gen & Fisiopatol, Caracas 1050, Venezuela
[3] Inst Venezolano Seguro Social IVSS, Serv Oncol Hosp SOH, Caracas 1040, Venezuela
[4] Univ Cent Venezuela, Escuela Estadist & Ciencias Actuariales, Caracas 1050, Venezuela
来源
ECANCERMEDICALSCIENCE | 2023年 / 17卷
关键词
Gail model; breast cancer; young women; risk factor; INTERNATIONAL CONSENSUS GUIDELINES; YOUNG-WOMEN; FAMILY HISTORY; VALIDATION;
D O I
10.3332/ecancer.2023.1590
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Objective: To evaluate the accuracy of the Gail model (GM) in women who already have a diagnosis of breast cancer (BC) from the Breast Pathology Service, Hospital Oncology Department of the Venezuelan Social Security Institute (SOH-IVSS) in the period 2004-2014. To compare the accuracy of the GM in women aged above and below 40 years with a diagnosis of BC. Method: Descriptive, retrospective, cross-sectional, 830 records of patients diagnosed with BC were reviewed between 2004 and 2014. Results: The mean age for diagnosis of the disease was 46 +/- 13 years; menarche age was 13 years +/- 2; age at first birth 22 +/- 5 years, with a history of biopsy 32 +/- 11, the percentage of relatives with a primary history of BC reported (PHBC) 9.3%. Only 41% of women with a diagnosis of BC reported Gail >1.67 (positive Gail). In the dichotomous logistic regression that related positive Gail with the independent variables, it was observed: greater probability of positive Gail if menarche age <11 years (p < 0.036), PHBC (p = 0.005), previous biopsy (p = 0.007), age at first birth 25-29 years (p = 0.019). When stratifying by age, unlike the bivariate analysis, women over 40 years of age are more likely to have a positive Gail in menarche age <11 years (p = 0.008), PHBC (p = 0.001), previous biopsy (p = 0.025) when compared with younger women, the age at first birth between 25 and 29 years was statistically significant for both groups; however, the probability was higher in younger women (p = 0.008). Conclusion: There is no conclusive evidence to consider that the GM is applicable to Venezuelan women due to its low precision since it only identified 41% of the patients who had BC as high risk; however, when the factors are analysed separately, we found a higher probability of a positive Gail with statistical significance in EM <11 years, PHBC, previous biopsy and age at first birth 25-29 years; When stratifying by age, we observed that the age at first birth 25-29 years in women aged 40 or less increases the probability of a positive Gail. It is necessary to develop new risk assessment models that are adapted to our female population.
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页数:11
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