Investigating the predictability of essential genes across distantly related organisms using an integrative approach

Jingyuan Deng(Cincinnati Children's Hospital Medical Center), Lei Deng(Cincinnati Children's Hospital Medical Center), Shengchang Su(Cincinnati Children's Hospital Medical Center), Minlu Zhang(Cincinnati Children's Hospital Medical Center), X. Sheldon Lin(Rutgers, The State University of New Jersey), Wei Lan(Cincinnati Children's Hospital Medical Center), Ali A. Minai(Cincinnati Children's Hospital Medical Center), Daniel J. Hassett(Cincinnati Children's Hospital Medical Center), Long Lu(Cincinnati Children's Hospital Medical Center)
Nucleic Acids Research
September 23, 2010
Cited by 135Open Access
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Abstract

Rapid and accurate identification of new essential genes in under-studied microorganisms will significantly improve our understanding of how a cell works and the ability to re-engineer microorganisms. However, predicting essential genes across distantly related organisms remains a challenge. Here, we present a machine learning-based integrative approach that reliably transfers essential gene annotations between distantly related bacteria. We focused on four bacterial species that have well-characterized essential genes, and tested the transferability between three pairs among them. For each pair, we trained our classifier to learn traits associated with essential genes in one organism, and applied it to make predictions in the other. The predictions were then evaluated by examining the agreements with the known essential genes in the target organism. Ten-fold cross-validation in the same organism yielded AUC scores between 0.86 and 0.93. Cross-organism predictions yielded AUC scores between 0.69 and 0.89. The transferability is likely affected by growth conditions, quality of the training data set and the evolutionary distance. We are thus the first to report that gene essentiality can be reliably predicted using features trained and tested in a distantly related organism. Our approach proves more robust and portable than existing approaches, significantly extending our ability to predict essential genes beyond orthologs.


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