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GIAO C–H COSY Simulations Merged with Artificial Neural Networks Pattern Recognition Analysis. Pushing the Structural Validation a Step Forward

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Figshare2015-12-17 更新2026-04-29 收录
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https://figshare.com/articles/dataset/GIAO_C_H_COSY_Simulations_Merged_with_Artificial_Neural_Networks_Pattern_Recognition_Analysis_Pushing_the_Structural_Validation_a_Step_Forward/2054370
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The structural validation problem using quantum chemistry approaches (confirm or reject a candidate structure) has been tackled with artificial neural network (ANN) mediated multidimensional pattern recognition from experimental and calculated 2D C–H COSY. In order to identify subtle errors (such as regio- or stereochemical), more than 400 ANNs have been built and trained, and the most efficient in terms of classification ability were successfully validated in challenging real examples of natural product misassignments.
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2015-12-17
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