Molecular structures are always depicted as 2D printed form in scientific documents like journal papers and patents. However, these 2D depictions are not machine-readable. Due to a backlog of decades and an increasing amount of these printed literature, there is a high demand for the translation of printed depictions into machine-readable formats, which is known as Optical Chemical Structure Recognition (OCSR). Most OCSR systems developed over the last three decades follow a rule-based approach where the key step of vectorization of the depiction is based on the interpretation of vectors and nodes as bonds and atoms. Here, we present a practical software MolMiner, which is primarily built up using deep neural networks originally developed for semantic segmentation and object detection to recognize atom and bond elements from documents. These recognized elements can be easily connected as a molecular graph with distance-based construction algorithm. We carefully evaluate our software on four benchmark datasets with the state-of-the-art performance. Various real application scenarios are also tested, yielding satisfactory outcomes. The free download links of Mac and Windows versions are available: Mac: https://molminer-cdn.iipharma.cn/pharma-mind/artifact/latest/mac/PharmaMind-mac-latest-setup.dmg and Windows: https://molminer-cdn.iipharma.cn/pharma-mind/artifact/latest/win/PharmaMind-win-latest-setup.exe
翻译:分子结构总是在期刊和专利等科学文件中被描述为 2D 打印形式。 但是, 2D 描述无法机器读取。 由于数十年的积压和这些印刷文献数量不断增加,对将印刷的描述转换成机器可读格式的需求很高,这种格式被称为光化化学结构识别(OCSR ) 。 过去三十年中开发的大多数OCSR系统都遵循基于规则的方法,即将描述的矢量化的关键步骤基于对矢量和节点作为债券和原子的解读。在这里,我们提出了一个实用的软件MolMiner, 主要是利用最初为语义分解开发的深层神经网络和对文件中的原子和粘结元素的检测而建立起来的。这些公认的元素可以很容易地作为分子图与远程建筑算法连接。 我们仔细评估了我们四个基准数据集的软件与最新艺术性能。 各种真实应用情景也经过测试,并产生了令人满意的结果。 苹果和Windows版本的免费下载链接是: https://mas://mart- maincalmacal/marge-marge-marmac-mart-mart-marge-mart/marge-marg-mard.