info:eu-repo/semantics/article
Uncovering protein interaction in abstracts and text using a novel linear model and word proximity networks
Fecha
2008-09-01Registro en:
Abi-Haidar, Alaa; Kaur, Jasleen; Maguitman, Ana Gabriela; Radivojac, Pedrag; Rechtsteiner, Andreas; et al.; Uncovering protein interaction in abstracts and text using a novel linear model and word proximity networks; BioMed Central; Genome Biology; 9; Supl. 2; 1-9-2008; S11-S30
1474-760X
CONICET Digital
CONICET
Autor
Abi-Haidar, Alaa
Kaur, Jasleen
Maguitman, Ana Gabriela
Radivojac, Pedrag
Rechtsteiner, Andreas
Verspoor, Karin
Wang, Zhiping
Rocha, Luis
Resumen
Background: We participated in three of the protein-protein interaction subtasks of the Second BioCreative Challenge: classification of abstracts relevant for protein-protein interaction (interaction article subtask [IAS]), discovery of protein pairs (interaction pair subtask [IPS]), and identification of text passages characterizing protein interaction (interaction sentences subtask [ISS]) in full-text documents. We approached the abstract classification task with a novel, lightweight linear model inspired by spam detection techniques, as well as an uncertainty-based integration scheme. We also used a support vector machine and singular value decomposition on the same features for comparison purposes. Our approach to the full-text subtasks (protein pair and passage identification) includes a feature expansion method based on word proximity networks. Results: Our approach to the abstract classification task (IAS) was among the top submissions for this task in terms of measures of performance used in the challenge evaluation (accuracy, F-score, and area under the receiver operating characteristic curve). We also report on a web tool that we produced using our approach: the Protein Interaction Abstract Relevance Evaluator (PIARE). Our approach to the full-text tasks resulted in one of the highest recall rates as well as mean reciprocal rank of correct passages. Conclusion: Our approach to abstract classification shows that a simple linear model, using relatively few features, can generalize and uncover the conceptual nature of protein-protein interactions from the bibliome. Because the novel approach is based on a rather lightweight linear model, it can easily be ported and applied to similar problems. In full-text problems, the expansion of word features with word proximity networks is shown to be useful, although the need for some improvements is discussed.