[HTML][HTML] A framework for personalized medicine: prediction of drug sensitivity in cancer by proteomic profiling

DC Kim, X Wang, CR Yang, JX Gao - Proteome Science, 2012 - Springer
DC Kim, X Wang, CR Yang, JX Gao
Proteome Science, 2012Springer
Background The goal of personalized medicine is to provide patients optimal drug screening
and treatment based on individual genomic or proteomic profiles. Reverse-Phase Protein
Array (RPPA) technology offers proteomic information of cancer patients which may be
directly related to drug sensitivity. For cancer patients with different drug sensitivity, the
proteomic profiling reveals important pathophysiologic information which can be used to
predict chemotherapy responses. Results The goal of this paper is to present a framework …
Background
The goal of personalized medicine is to provide patients optimal drug screening and treatment based on individual genomic or proteomic profiles. Reverse-Phase Protein Array (RPPA) technology offers proteomic information of cancer patients which may be directly related to drug sensitivity. For cancer patients with different drug sensitivity, the proteomic profiling reveals important pathophysiologic information which can be used to predict chemotherapy responses.
Results
The goal of this paper is to present a framework for personalized medicine using both RPPA and drug sensitivity (drug resistance or intolerance). In the proposed personalized medicine system, the prediction of drug sensitivity is obtained by a proposed augmented naive Bayesian classifier (ANBC) whose edges between attributes are augmented in the network structure of naive Bayesian classifier. For discriminative structure learning of ANBC, local classification rate (LCR) is used to score augmented edges, and greedy search algorithm is used to find the discriminative structure that maximizes classification rate (CR). Once a classifier is trained by RPPA and drug sensitivity using cancer patient samples, the classifier is able to predict the drug sensitivity given RPPA information from a patient.
Conclusion
In this paper we proposed a framework for personalized medicine where a patient is profiled by RPPA and drug sensitivity is predicted by ANBC and LCR. Experimental results with lung cancer data demonstrate that RPPA can be used to profile patients for drug sensitivity prediction by Bayesian network classifier, and the proposed ANBC for personalized cancer medicine achieves better prediction accuracy than naive Bayes classifier in small sample size data on average and outperforms other the state-of-the-art classifier methods in terms of classification accuracy.
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