Molecular Therapy: Nucleic Acids (Dec 2019)

Computational Methods for Identifying Similar Diseases

  • Liang Cheng,
  • Hengqiang Zhao,
  • Pingping Wang,
  • Wenyang Zhou,
  • Meng Luo,
  • Tianxin Li,
  • Junwei Han,
  • Shulin Liu,
  • Qinghua Jiang

Journal volume & issue
Vol. 18
pp. 590 – 604

Abstract

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Although our knowledge of human diseases has increased dramatically, the molecular basis, phenotypic traits, and therapeutic targets of most diseases still remain unclear. An increasing number of studies have observed that similar diseases often are caused by similar molecules, can be diagnosed by similar markers or phenotypes, or can be cured by similar drugs. Thus, the identification of diseases similar to known ones has attracted considerable attention worldwide. To this end, the associations between diseases at the molecular, phenotypic, and taxonomic levels were used to measure the pairwise similarity in diseases. The corresponding performance assessment strategies for these methods involving the terms “category-based,” “simulated-patient-based,” and “benchmark-data-based” were thus further emphasized. Then, frequently used methods were evaluated using a benchmark-data-based strategy. To facilitate the assessment of disease similarity scores, researchers have designed dozens of tools that implement these methods for calculating disease similarity. Currently, disease similarity has been advantageous in predicting noncoding RNA (ncRNA) function and therapeutic drugs for diseases. In this article, we review disease similarity methods, evaluation strategies, tools, and their applications in the biomedical community. We further evaluate the performance of these methods and discuss the current limitations and future trends for calculating disease similarity. Keywords: disease similarity, phenotypic traits, molecular basis, ncRNA function, therapeutic drugs