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  "documentTitle": "2022 Air Street Capital The State of AI Report 2022",
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      "text": "An important goal of genomic research is to understand where proteins localize and how they interact in a cell to enable particular functions. With its dataset of 1,310 tagged proteins across ~5,900 3D images, the OpenCell initiative enabled researchers to draw important links between spatial distribution of proteins, their functions, and their interactions.\nMarkov clustering on the graph of protein interactions successfully delineated functionally related proteins. This will help researchers better understand so-far uncharacterized proteins.\nWe often expect ML to deliver definitive predictions. But here as with math, ML first gives partial answers (here clusters), humans then interpret, formulate and test hypotheses, before delivering a definitive answer.",
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