TY - JOUR A1 - Egidi, Viviana A1 - Rivellini, Giulia A1 - Salvatore, Michele Antonio A1 - D'Angelo, Silvia T1 - A network approach to studying cause-of-death interrelations Y1 - 2018/01/26 JF - Demographic Research JO - Demographic Research SN - 1435-9871 SP - 373 EP - 400 DO - 10.4054/DemRes.2018.38.16 VL - 38 IS - 16 UR - https://www.demographic-research.org/volumes/vol38/16/ L1 - https://www.demographic-research.org/volumes/vol38/16/38-16.pdf L2 - https://www.demographic-research.org/volumes/vol38/16/38-16.pdf L3 - https://www.demographic-research.org/volumes/vol38/16/files/readme.38-16.txt L3 - https://www.demographic-research.org/volumes/vol38/16/files/demographic-research.38-16.zip N2 - Background: Multiple causes of death describe complex death processes marked by the simultaneous presence of several diseases and conditions, primarily at older ages. Objective: We intend to explore the opportunity offered by the Social Network Analysis (SNA) in the study of multiple relationships in the causes of death. Methods: SNA allowed us to reconstruct the complex system of relationships linking the causes of death mentioned in the same death certificate for Italian men and women aged 65 years and over in 2011. The causes can be represented as actors of a network where the relational tie establishes a linkage between a cause mentioned together with another. The strength of this association is represented by the frequency of the joint mentioning in the same certificate controlling for the confounding effect due to the different prevalence of the causes. Results: The analysis clearly brought out that causes of death describe a very dense system of relationships. Considering only the strongest associations, the graphical analysis showed subgroups of causes, within which cross-references are very frequent while mentions external to the group are rare. Moreover, SNA concepts and instruments allowed us to identify causes playing important roles in death processes and mortality patterns. Conclusions: SNA has proved to be very powerful in identifying the relationships between causes of death, on which health policies should take action to further reduce mortality risks of elderly persons. Contribution: The method was able to highlight complex structures composing subgroups of diseases, offering a clearer picture of the characteristics of death processes than the analyses conducted so far have allowed. ER -