Mathematical Sciences Department, College of Science, Princess Nourah bint Abdulrahman University, Riyadh, Saudi Arabia.
Department of Biostatistics, School of Public Health, University of Ghana, Legon, Accra, Ghana.
Comput Math Methods Med. 2020 Feb 8;2020:9076567. doi: 10.1155/2020/9076567. eCollection 2020.
One of the major causes of death among females in Saudi Arabia is breast cancer. Newly diagnosed cases of breast cancer among the female population in Saudi Arabia is 19.5%. With this high incidence, it is crucial that we explore the determinants associated with breast cancer among the Saudi Arabia populace-the focus of this current study. The total sample size for this study is 8312 (8172 females and about 140 representing 1.68% males) patients that were diagnosed with advanced breast cancer. These are facility-based cross-sectional data collected over a 9-year period (2004 to 2013) from a routine health information system database. The data were obtained from the Saudi Cancer Registry (SCR). Both descriptive and inferential (Cox with log-normal and gamma frailties) statistics were conducted. The deviance information criterion (DIC), Watanabe-Akaike information criterion (WAIC), Bayesian information criterion (BIC), and Akaike information criterion were used to evaluate or discriminate between models. For all the six models fitted, the models which combined the fixed and random effects performed better than those with only the fixed effects. This is so because those models had smaller AIC and BIC values. The analyses were done using R and the INLA statistical software. There are evident disparities by regions with Riyadh, Makkah, and Eastern Province having the highest number of cancer patients at 28%, 26%, and 20% respectively. Grade II (46%) and Grade III (45%) are the most common cancer grades. Left paired site laterality (51%) and regional extent (52%) were also most common characteristics. Overall marital status, grade, and cancer extent increased the risk of a cancer patient dying. Those that were married had a hazard ratio of 1.36 (95% CI: 1.03-1.80) while widowed had a hazard ratio of 1.57 (95% CI: 1.14-2.18). Both the married and widowed were at higher risk of dying with cancer relative to respondents who had divorced. For grade, the risk was higher for all the levels, that is, Grade I (Well diff) (HR = 7.11, 95% CI: 3.32-15.23), Grade II (Mod diff) (HR = 7.89, 95% CI: 3.88-16.06), Grade III (Poor diff) (HR = 5.90, 95% CI (2.91-11.96), and Grade IV (Undiff) (HR = 5.44, 95% (2.48-11.9), relative to B-cell. These findings provide empirical evidence that information about individual patients and their region of residence is an important contributor in understanding the inequalities in cancer mortalities and that the application of robust statistical methodologies is also needed to better understand these issues well.
在沙特阿拉伯,女性死亡的主要原因之一是乳腺癌。沙特阿拉伯女性新诊断出的乳腺癌病例占 19.5%。鉴于这种高发病率,我们必须探索与沙特阿拉伯人口中乳腺癌相关的决定因素——这是当前研究的重点。本研究的总样本量为 8312 名(8172 名女性和约 140 名男性,占 1.68%)被诊断患有晚期乳腺癌的患者。这些是基于设施的横断面数据,收集时间为 9 年(2004 年至 2013 年),来自常规健康信息系统数据库。数据来自沙特癌症登记处(SCR)。进行了描述性和推断性(Cox 与对数正态和伽马脆弱性)统计分析。偏差信息准则(DIC)、Watanabe-Akaike 信息准则(WAIC)、贝叶斯信息准则(BIC)和 Akaike 信息准则用于评估或区分模型。对于拟合的所有六个模型,结合固定和随机效应的模型表现优于仅具有固定效应的模型。这是因为这些模型具有更小的 AIC 和 BIC 值。分析使用 R 和 INLA 统计软件进行。按地区划分,利雅得、麦加和东部省的癌症患者数量最多,分别为 28%、26%和 20%。第二级(46%)和第三级(45%)是最常见的癌症等级。左侧配对部位的侧位(51%)和区域范围(52%)也是最常见的特征。总体婚姻状况、等级和癌症范围增加了癌症患者死亡的风险。已婚者的危险比为 1.36(95%CI:1.03-1.80),而丧偶者的危险比为 1.57(95%CI:1.14-2.18)。与离婚的受访者相比,已婚和丧偶的癌症患者死亡风险更高。对于等级,所有等级的风险都更高,即一级(Well diff)(HR=7.11,95%CI:3.32-15.23)、二级(Mod diff)(HR=7.89,95%CI:3.88-16.06)、三级(Poor diff)(HR=5.90,95%CI(2.91-11.96)和四级(Undiff)(HR=5.44,95%(2.48-11.9),相对于 B 细胞。这些发现提供了经验证据,表明个体患者及其居住地区的信息是了解癌症死亡率不平等的重要因素,并且还需要应用稳健的统计方法来更好地了解这些问题。