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.

Highlights

  • Multimorbidity, frequently associated with aging, can be operationally defined as the presence of two or more chronic conditions

  • The different types of biological networks discussed above are generally categorized as unipartite networks, where there is only one type of node and any node can connect with any other node.Another type of network, termed bipartite network, has been extensively researched in the domains of system biology and ­medicine[13,14,15]

  • To estimate the prediction accuracy of all the prediction indices, we split the observed links into a training set ET and a probe set EP, such that 90% of the links belong to the training set while the remaining 10% links lie within the probe set

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Summary

Introduction

Multimorbidity, frequently associated with aging, can be operationally defined as the presence of two or more chronic conditions. These methods, termed as local similarity indices, can be efficiently computed, and exhibit good performance in predicting missing links in many real-world networks. We further extend this method to temporal bipartite networks and develop similarity index that make use of conditional probabilities of the target set.

Results
Conclusion
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