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2004年至2017年尼日利亚东北部癌症患者的生存分析——一种Kaplan-Meier方法

Survival Analysis of Cancer Patients in North Eastern Nigeria from 2004 - 2017 - A Kaplan - Meier Method.

作者信息

Adamu Patience I, Adamu Muminu O, Okagbue Hilary I, Opoola Laban, Bishop Sheila A

机构信息

Department of Mathematics, College of Science and Technology, Covenant University, Ota, Nigeria.

Department of Mathematics, Faculty of Science, University of Lagos, Akoka, Lagos, Nigeria.

出版信息

Open Access Maced J Med Sci. 2019 Feb 22;7(4):643-650. doi: 10.3889/oamjms.2019.109. eCollection 2019 Feb 28.

Abstract

BACKGROUND

Cancer is a deadly malignant disease and is prevalent in Sub Saharan Africa. The North East part of Nigeria in particular and the country, in general, are struggling to cope with the increasing burden of cancer and other communicable and non-communicable diseases. The situation is worsened by the ongoing insurgency and terrorist activities in the area.

AIM

The aim of this paper is to present the research findings from a cohort study aimed at the analysis of the estimation of the survivorship time of the real data of cancer patients in the North-eastern part of Nigeria and to establish if the insurgency in the region has contributed negatively to the life expectancy of its inhabitants.

MATERIAL AND METHODS

The record of 1,090 patients from medical records departments of the University of Maiduguri Teaching Hospital (UMTH), located in Maiduguri, the capital city of Borno State in northeast Nigeria was obtained. The record showed patients that were diagnosed and died of one type of cancer or the other from 2004 to 2017. All the cancer cases included in the present study were grouped into sex, age, marital status, occupation, date admitted and date of death/discharge. Descriptive statistics and Kaplan-Meier method were used to analyse the data using SPSS version 23 while Microsoft EXCEL and Minitab 16.0 were used for data cleansing and organisation.

RESULTS

Of the 1,090 patients analysed, 920 (84.40%) experienced the event, i.e. death, while 170 (15.60%) patients were censored. The data were analysed based on the ages and sex of the patients. 50.20% of the patients were of ages 21-50 years. The proportions of patients in this age bracket surviving past 7 days are 75%, while those between ages 80 years and above is 12 days. Others are of survival time of 5 days (ages 0-20 years) and 7 days (51-79 years). Using sex, 75% of the patients' survival time is 7 days in the case of male and 6 days for females. It is safe to say that the survival time for cancer patients of the university the Maiduguri is 6 days and the result reflects the Northeastern part of Nigeria. This is because the hospital is one of few tertiary healthcare facilities in that area and consequently, cancer cases are often referred there.

CONCLUSION

Cancer incidence is high, and the probability of survival reduces as the survival time increases. This is a dire situation in need of urgent intervention from the government, groups and individuals to tackle the scourge of cancer, thereby improving on the life expectancy battered by the ongoing Boko Haram insurgency in that region.

摘要

背景

癌症是一种致命的恶性疾病,在撒哈拉以南非洲地区普遍存在。尤其是尼日利亚东北部地区,乃至整个国家,都在努力应对日益加重的癌症负担以及其他传染病和非传染病。该地区持续的叛乱和恐怖活动使情况更加恶化。

目的

本文旨在呈现一项队列研究的研究结果,该研究旨在分析尼日利亚东北部癌症患者真实数据的生存时间估计,并确定该地区的叛乱是否对当地居民的预期寿命产生了负面影响。

材料与方法

获取了位于尼日利亚东北部博尔诺州首府迈杜古里的迈杜古里大学教学医院(UMTH)病历部门的1090名患者的记录。该记录显示了2004年至2017年期间被诊断患有某种癌症并死亡的患者。本研究纳入的所有癌症病例按性别、年龄、婚姻状况、职业、入院日期和死亡/出院日期进行分组。使用SPSS 23版软件,采用描述性统计和Kaplan-Meier方法对数据进行分析,同时使用Microsoft EXCEL和Minitab 16.0进行数据清理和整理。

结果

在分析的1090名患者中,920名(84.40%)经历了事件,即死亡,而170名(15.60%)患者被截尾。数据根据患者的年龄和性别进行分析。50.20%的患者年龄在21至50岁之间。这个年龄段的患者存活超过7天的比例为75%,而80岁及以上患者的存活时间为12天。其他年龄段的存活时间分别为5天(0至20岁)和7天(51至79岁)。按性别划分,男性患者75%的存活时间为7天,女性为6天。可以肯定地说,迈杜古里大学癌症患者的存活时间为6天,这一结果反映了尼日利亚东北部的情况。这是因为该医院是该地区为数不多的三级医疗设施之一,因此癌症病例经常被转诊到那里。

结论

癌症发病率很高,且随着存活时间的增加,存活概率降低。这是一种严峻的情况,急需政府、团体和个人采取紧急干预措施来应对癌症这一祸害,从而改善因该地区持续的博科圣地叛乱而受到影响的预期寿命。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/062a/6420928/7da2a6459d87/OAMJMS-7-643-g001.jpg

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