LGSep 19, 2021

Co-occurrence of medical conditions: Exposing patterns through probabilistic topic modeling of SNOMED codes

arXiv:2109.09199v110 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of understanding co-occurring conditions in kidney disease patients, which is incremental as it adapts an existing method to a new data type.

The study applied probabilistic topic modeling to SNOMED codes from over 13,000 kidney disease patients to identify patterns of co-occurring medical conditions, finding tight and distinctive topics with some novel indirect associations not previously reported.

Patients associated with multiple co-occurring health conditions often face aggravated complications and less favorable outcomes. Co-occurring conditions are especially prevalent among individuals suffering from kidney disease, an increasingly widespread condition affecting 13% of the general population in the US. This study aims to identify and characterize patterns of co-occurring medical conditions in patients employing a probabilistic framework. Specifically, we apply topic modeling in a non-traditional way to find associations across SNOMEDCT codes assigned and recorded in the EHRs of>13,000 patients diagnosed with kidney disease. Unlike most prior work on topic modeling, we apply the method to codes rather than to natural language. Moreover, we quantitatively evaluate the topics, assessing their tightness and distinctiveness, and also assess the medical validity of our results. Our experiments show that each topic is succinctly characterized by a few highly probable and unique disease codes, indicating that the topics are tight. Furthermore, inter-topic distance between each pair of topics is typically high, illustrating distinctiveness. Last, most coded conditions grouped together within a topic, are indeed reported to co-occur in the medical literature. Notably, our results uncover a few indirect associations among conditions that have hitherto not been reported as correlated in the medical literature.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes