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Spatial-temporal analysis of breast cancer in upper Cape Cod, Massachusetts

机译:马萨诸塞州上鳕鱼角乳腺癌的时空分析

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Introduction The reasons for elevated breast cancer rates in the upper Cape Cod area of Massachusetts remain unknown despite several epidemiological studies that investigated possible environmental risk factors. Data from two of these population-based case-control studies provide geocoded residential histories and information on confounders, creating an invaluable dataset for spatial-temporal analysis of participants' residency over five decades. Methods The combination of statistical modeling and mapping is a powerful tool for visualizing disease risk in a spatial-temporal analysis. Advances in geographic information systems (GIS) enable spatial analytic techniques in public health studies previously not feasible. Generalized additive models (GAMs) are an effective approach for modeling spatial and temporal distributions of data, combining a number of desirable features including smoothing of geographical location, residency duration, or calendar years; the ability to estimate odds ratios (ORs) while adjusting for confounders; selection of optimum degree of smoothing (span size); hypothesis testing; and use of standard software. We conducted a spatial-temporal analysis of breast cancer case-control data using GAMs and GIS to determine the association between participants' residential history during 1947–1993 and the risk of breast cancer diagnosis during 1983–1993. We considered geographic location alone in a two-dimensional space-only analysis. Calendar year, represented by the earliest year a participant lived in the study area, and residency duration in the study area were modeled individually in one-dimensional time-only analyses, and together in a two-dimensional time-only analysis. We also analyzed space and time together by applying a two-dimensional GAM for location to datasets of overlapping calendar years. The resulting series of maps created a movie which allowed us to visualize changes in magnitude, geographic size, and location of elevated breast cancer risk for the 40 years of residential history that was smoothed over space and time. Results The space-only analysis showed statistically significant increased areas of breast cancer risk in the northern part of upper Cape Cod and decreased areas of breast cancer risk in the southern part (p-value = 0.04; ORs: 0.90–1.40). There was also a significant association between breast cancer risk and calendar year (p-value = 0.05; ORs: 0.53–1.38), with earlier calendar years resulting in higher risk. The results of the one-dimensional analysis of residency duration and the two-dimensional analysis of calendar year and duration showed that the risk of breast cancer increased with increasing residency duration, but results were not statistically significant. When we considered space and time together, the maps showed a large area of statistically significant elevated risk for breast cancer near the Massachusetts Military Reservation (p-value range:0.02–0.05; ORs range: 0.25–2.5). This increased risk began with residences in the late 1940s and remained consistent in size and location through the late 1950s. Conclusion Spatial-temporal analysis of the breast cancer data may help identify new exposure hypotheses that warrant future epidemiologic investigations with detailed exposure models. Our methods allow us to visualize breast cancer risk, adjust for known confounders including age at diagnosis or index year, family history of breast cancer, parity and age at first live- or stillbirth, and test for the statistical significance of location and time. Despite the advantages of GAMs, analyses are for exploratory purposes and there are still methodological issues that warrant further research. This paper illustrates that GAM methods are a suitable alternative to widely-used cluster detection methods and may be preferable when residential histories from existing epidemiological studies are available.
机译:引言尽管有几项流行病学研究对可能的环境危险因素进行了调查,但马萨诸塞州科德角上部地区乳腺癌发生率升高的原因仍然未知。这些基于人口的案例研究中的两项研究提供了经过地理编码的居住历史和混杂因素信息,从而创建了一个宝贵的数据集,用于对参与者的居住地进行时空分析,历时五十年。方法统计建模与绘图的结合是在时空分析中可视化疾病风险的强大工具。地理信息系统(GIS)的进步使以前无法实现的公共卫生研究中的空间分析技术成为可能。通用加性模型(GAM)是一种有效的建模数据时空分布的方法,它结合了许多理想的功能,包括地理位置,居住时间或日历年的平滑化。在针对混杂因素进行调整时估算比值比(OR)的能力;选择最佳的平滑度(跨度);假设检验;和使用标准软件。我们使用GAM和GIS对乳腺癌病例控制数据进行了时空分析,以确定参与者在1947-1993年期间的居住历史与1983-1993年之间的乳腺癌诊断风险之间的关联。我们仅在二维空间分析中考虑了地理位置。日历年(由参与者最早居住在研究区域的年份代表)和研究区域的居住时间分别通过一维仅时间分析和二维仅时间分析进行建模。我们还通过将二维GAM定位到重叠日历年的数据集来一起分析了空间和时间。由此产生的一系列地图创造了一部电影,使我们能够直观地观察40年来居住历史中随着时间和空间而变平滑的幅度,地理大小和乳腺癌风险升高的位置的变化。结果仅进行空间分析显示,上鳕鱼角北部的乳腺癌风险增加区域具有统计学意义,而南部地区的乳腺癌风险减少区域具有统计学意义(p值= 0.04; OR:0.90-1.40)。乳腺癌风险与日历年之间也存在显着相关性(p值= 0.05; OR:0.53-1.38),日历年越早,风险越高。住院时间的一维分析和日历年和住院时间的二维分析的结果表明,乳腺癌的风险随着住院时间的增加而增加,但结果无统计学意义。当我们一起考虑时间和空间时,地图显示马萨诸塞州军事保留区附近的乳腺癌患病率在统计学上有显着升高(p值范围:0.02-0.05; OR范围:0.25-2.5)。这种增加的风险始于1940年代后期的居所,直到1950年代后期在规模和位置上一直保持一致。结论乳腺癌数据的时空分析可能有助于确定新的暴露假说,这些假说值得将来使用详细的暴露模型进行流行病学调查。我们的方法使我们能够可视化患乳腺癌的风险,调整已知的混杂因素,包括诊断或索引年份的年龄,乳腺癌的家族病史,首次活产或死产时的胎龄和年龄,并测试位置和时间的统计学意义。尽管GAM的优势,但分析只是出于探索目的,仍然存在需要进一步研究的方法论问题。本文说明,GAM方法是广泛使用的聚类检测方法的合适替代方法,当可以根据现有的流行病学研究获得居住历史时,GAM方法可能是更可取的。

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