Scientific Reports (Aug 2021)

Multimorbidity prediction using link prediction

  • Furqan Aziz,
  • Victor Roth Cardoso,
  • Laura Bravo-Merodio,
  • Dominic Russ,
  • Samantha C. Pendleton,
  • John A. Williams,
  • Animesh Acharjee,
  • Georgios V. Gkoutos

DOI
https://doi.org/10.1038/s41598-021-95802-0
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 11

Abstract

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Abstract Multimorbidity, frequently associated with aging, can be operationally defined as the presence of two or more chronic conditions. Predicting the likelihood of a patient with multimorbidity to develop a further particular disease in the future is one of the key challenges in multimorbidity research. In this paper we are using a network-based approach to analyze multimorbidity data and develop methods for predicting diseases that a patient is likely to develop. The multimorbidity data is represented using a temporal bipartite network whose nodes represent patients and diseases and a link between these nodes indicates that the patient has been diagnosed with the disease. Disease prediction then is reduced to a problem of predicting those missing links in the network that are likely to appear in the future. We develop a novel link prediction method for static bipartite network and validate the performance of the method on benchmark datasets. By using a probabilistic framework, we then report on the development of a method for predicting future links in the network, where links are labelled with a time-stamp. We apply the proposed method to three different multimorbidity datasets and report its performance measured by different performance metrics including AUC, Precision, Recall, and F-Score.