QMGNMLApr 1, 2014

Toward computational cumulative biology by combining models of biological datasets

arXiv:1404.0329v116 citations
Originality Incremental advance
AI Analysis

This addresses the problem of inefficient dataset retrieval for researchers in computational biology, though it is incremental as it builds on existing modeling approaches.

The paper tackles the challenge of making research cumulative by maximizing use of expanding biological datasets, introducing a modeling-based dataset retrieval engine that decomposes new datasets into contributions from earlier models, resulting in more accurate and biologically meaningful relationships than keyword searches, such as recovering links between thymocytes and T-cells and uncovering database errors.

A main challenge of data-driven sciences is how to make maximal use of the progressively expanding databases of experimental datasets in order to keep research cumulative. We introduce the idea of a modeling-based dataset retrieval engine designed for relating a researcher's experimental dataset to earlier work in the field. The search is (i) data-driven to enable new findings, going beyond the state of the art of keyword searches in annotations, (ii) modeling-driven, to both include biological knowledge and insights learned from data, and (iii) scalable, as it is accomplished without building one unified grand model of all data. Assuming each dataset has been modeled beforehand, by the researchers or by database managers, we apply a rapidly computable and optimizable combination model to decompose a new dataset into contributions from earlier relevant models. By using the data-driven decomposition we identify a network of interrelated datasets from a large annotated human gene expression atlas. While tissue type and disease were major driving forces for determining relevant datasets, the found relationships were richer and the model-based search was more accurate than keyword search; it moreover recovered biologically meaningful relationships that are not straightforwardly visible from annotations, for instance, between cells in different developmental stages such as thymocytes and T-cells. Data-driven links and citations matched to a large extent; the data-driven links even uncovered corrections to the publication data, as two of the most linked datasets were not highly cited and turned out to have wrong publication entries in the database.

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