Department of Community Health Sciences, University of Manitoba, Winnipeg, Manitoba, Canada.
George and Fay Yee Centre for Healthcare Innovation, University of Manitoba, 3rd Floor, 753 McDermot Ave, Winnipeg, Manitoba, R3E 0T6, Canada.
BMC Med Res Methodol. 2022 Jun 8;22(1):165. doi: 10.1186/s12874-022-01607-8.
Network analysis, a technique for describing relationships, can provide insights into patterns of co-occurring chronic health conditions. The effect that co-occurrence measurement has on disease network structure and resulting inferences has not been well studied. The purpose of the study was to compare structural differences among multimorbidity networks constructed using different co-occurrence measures.
A retrospective cohort study was conducted using four fiscal years of administrative health data (2015/16 - 2018/19) from the province of Manitoba, Canada (population 1.5 million). Chronic conditions were identified using diagnosis codes from electronic records of physician visits, surgeries, and inpatient hospitalizations, and grouped into categories using the Johns Hopkins Adjusted Clinical Group (ACG) System. Pairwise disease networks were separately constructed using each of seven co-occurrence measures: lift, relative risk, phi, Jaccard, cosine, Kulczynski, and joint prevalence. Centrality analysis was limited to the top 20 central nodes, with degree centrality used to identify potentially influential chronic conditions. Community detection was used to identify disease clusters. Similarities in community structure between networks was measured using the adjusted Rand index (ARI). Network edges were described using disease prevalence categorized as low (< 1%), moderate (1 to < 7%), and high (≥7%). Network complexity was measured using network density and frequencies of nodes and edges.
Relative risk and lift highlighted co-occurrences between pairs of low prevalence health conditions. Kulczynski emphasized relationships between high and low prevalence conditions. Joint prevalence focused on highly-prevalent conditions. Phi, Jaccard, and cosine emphasized associations involving moderately prevalent conditions. Co-occurrence measurement differences significantly affected the number and structure of identified disease clusters. When limiting the number of edges to produce visually interpretable graphs, networks had significant dissimilarity in the percentage of co-occurrence relationships in common, and in their selection of the highest-degree nodes.
Multimorbidity network analyses are sensitive to disease co-occurrence measurement. Co-occurrence measures should be selected considering their intrinsic properties, research objectives, and the health condition prevalence relationships of greatest interest. Researchers should consider conducting sensitivity analyses using different co-occurrence measures.
网络分析是一种描述关系的技术,可以提供对同时发生的慢性健康状况模式的深入了解。共同发生测量对疾病网络结构和由此产生的推断的影响尚未得到很好的研究。本研究的目的是比较使用不同共同发生测量方法构建的多疾病网络的结构差异。
使用来自加拿大马尼托巴省的四年(2015/16 年至 2018/19 年)行政健康数据进行回顾性队列研究(人口 150 万)。使用电子病历中医生就诊、手术和住院治疗的诊断代码来识别慢性疾病,并使用约翰霍普金斯调整临床组(ACG)系统将其分组。分别使用七种共同发生测量方法中的每一种来构建疾病对网络:提升、相对风险、phi、Jaccard、余弦、Kulczynski 和联合流行率。中心性分析仅限于前 20 个中心节点,使用度中心性来识别潜在的有影响力的慢性疾病。社区检测用于识别疾病集群。使用调整后的 Rand 指数(ARI)来衡量网络之间社区结构的相似性。使用按疾病流行率分类的低(<1%)、中(1-<7%)和高(≥7%)来描述网络边缘。网络密度和节点和边缘的频率用于衡量网络复杂性。
相对风险和提升突出了低流行率健康状况之间的共同发生。Kulczynski 强调了高流行率和低流行率条件之间的关系。联合流行率侧重于高流行率的疾病。phi、Jaccard 和余弦强调了涉及中度流行率的条件的关联。共同发生测量的差异显著影响了所识别的疾病集群的数量和结构。当限制边数以生成视觉上可解释的图形时,网络在共同发生关系的百分比、最高度节点的选择方面存在显著的差异。
多疾病网络分析对疾病共同发生测量敏感。应根据其内在特性、研究目标以及最感兴趣的健康状况共同发生关系选择共同发生测量方法。研究人员应考虑使用不同的共同发生测量方法进行敏感性分析。