Correlation Engine 2.0
Clear Search sequence regions


filter terms:
  • across (1)
  • metal (15)
  • Sizes of these terms reflect their relevance to your search.

    Identifying optimal synthesis conditions for metal-organic frameworks (MOFs) is a major challenge that can serve as a bottleneck for new materials discovery and development. A trial-and-error approach that relies on a chemist's intuition and knowledge has limitations in efficiency due to the large MOF synthesis space. To this end, 46,701 MOFs were data mined using our in-house developed code to extract their synthesis information from 28,565 MOF papers. The joint machine-learning/rule-based algorithm yields an average F1 score of 90.3% across different synthesis parameters (i.e., metal precursors, organic precursors, solvents, temperature, time, and composition). From this data set, a positive-unlabeled learning algorithm was developed to predict the synthesis of a given MOF material using synthesis conditions as inputs, and this algorithm successfully predicted successful synthesis in 83.1% of the synthesized data in the test set. Finally, our model correctly predicted three amorphous MOFs (with their representative experimental synthesis conditions) as having low synthesizability scores, while the counterpart crystalline MOFs showed high synthesizability scores. Our results show that big data extracted from the texts of MOF papers can be used to rationally predict synthesis conditions for these materials, which can accelerate the speed in which new MOFs are synthesized.

    Citation

    Hyunsoo Park, Yeonghun Kang, Wonyoung Choe, Jihan Kim. Mining Insights on Metal-Organic Framework Synthesis from Scientific Literature Texts. Journal of chemical information and modeling. 2022 Mar 14;62(5):1190-1198

    Expand section icon Mesh Tags

    Expand section icon Substances


    PMID: 35195419

    View Full Text