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Jing Hu

Researcher at Franklin & Marshall College

Publications -  23
Citations -  2149

Jing Hu is an academic researcher from Franklin & Marshall College. The author has contributed to research in topics: Matthews correlation coefficient & k-nearest neighbors algorithm. The author has an hindex of 9, co-authored 22 publications receiving 1647 citations. Previous affiliations of Jing Hu include Utah State University.

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SIFT web server: predicting effects of amino acid substitutions on proteins

TL;DR: This work has updated SIFT’s genome-wide prediction tool since the last publication in 2009, and added new features to the insertion/deletion (indel) tool.
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SIFT Indel: Predictions for the Functional Effects of Amino Acid Insertions/Deletions in Proteins

TL;DR: A SIFT Indel prediction algorithm for 3n indels which achieves 82% accuracy, 81% sensitivity, 82% specificity, 84% precision, 0.63 MCC, and 0.87 AUC by 10-fold cross-validation is constructed.
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Predicting the effects of frameshifting indels

TL;DR: SIFT Indel, a prediction method for frameshifting indels that has 84% accuracy, shows that although the first frameshifts indel in a gene causes loss of function, there is a tendency for the second frameshifted indel to compensate and restore protein function.
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BS-KNN: An Effective Algorithm for Predicting Protein Subchloroplast Localization

TL;DR: BS-KNN, a bit-score weighted K-nearest neighbor method for predicting proteins' subchloroplast locations, makes predictions based on the bit- score weighted Euclidean distance calculated from the composition of selected pseudo-amino acids.
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Identification of deleterious non-synonymous single nucleotide polymorphisms using sequence-derived information

TL;DR: The feasibility of classifying SAPs into disease-causing and neutral mutations using only information derived from protein sequence is explored using an automated method to systematically discover useful features from a large set of features well-annotated in public databases.