SMiCRM: A Benchmark Dataset of Mechanistic Molecular Images
This dataset addresses a domain-specific challenge in chemistry for researchers developing OCSR methods, but it is incremental as it focuses on a new type of data rather than a novel method.
The authors tackled the problem of optical chemical structure recognition (OCSR) by creating SMiCRM, a benchmark dataset of 453 images with arrow-pushing diagrams to test machine recognition of chemical molecules, providing annotated molecular identities and mechanistic arrows.
Optical chemical structure recognition (OCSR) systems aim to extract the molecular structure information, usually in the form of molecular graph or SMILES, from images of chemical molecules. While many tools have been developed for this purpose, challenges still exist due to different types of noises that might exist in the images. Specifically, we focus on the 'arrow-pushing' diagrams, a typical type of chemical images to demonstrate electron flow in mechanistic steps. We present Structural molecular identifier of Molecular images in Chemical Reaction Mechanisms (SMiCRM), a dataset designed to benchmark machine recognition capabilities of chemical molecules with arrow-pushing annotations. Comprising 453 images, it spans a broad array of organic chemical reactions, each illustrated with molecular structures and mechanistic arrows. SMiCRM offers a rich collection of annotated molecule images for enhancing the benchmarking process for OCSR methods. This dataset includes a machine-readable molecular identity for each image as well as mechanistic arrows showing electron flow during chemical reactions. It presents a more authentic and challenging task for testing molecular recognition technologies, and achieving this task can greatly enrich the mechanisitic information in computer-extracted chemical reaction data.