Human Protein Atlas Image Classification


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The Human Protein Atlas Image Classification calls on participants to train machine learning models to classify the patterns of protein expression within images of human cells. The team behind the Cell Atlas of the Human Protein Atlas has opened up an online machine learning competition.

The team behind the Cell Atlas of the Human Protein Atlas has opened up an online machine learning competition that will award USD 37,000 to be split among the creators of the best algorithms for classifying protein expression in images of human cells. The competition will run for 90 days beginning October 3, 2018, on Kaggle.com.

Images visualizing proteins in cells are commonly used for biomedical research, and these cells could hold the keys for the next breakthrough in medicine. However, thanks to advances in high-throughput microscopy, these images are generated at a far greater pace than what can be manually evaluated.

"There's a great need for an enhanced automation of biomedical image analysis to accelerate the understanding of human cells and disease", says KTH researcher Emma Lundberg, who directs the Cell Atlas project, part of the Human Protein Atlas at the Science for Life Laboratory joint research center in Stockholm.

The Human Protein Atlas Image Classification calls on participants to train machine learning models to classify the patterns of protein expression within images of human cells. Creators of the best algorithms will split $37,000 in cash provided by Leica Microsystems, and an NVIDIA Quadro GV100 GPU.

Previous studies from the Cell Atlas team (Thul. et al, Science 2017) have reported that as much as half of all human proteins are localized to multiple cellular compartments, including many key drug target proteins. Historically, classification efforts have been limited to single patterns in one or a few cell types, but in order to fully understand the complexity of the human cell, models are needed that can classify mixed patterns across a range of different human cells. In a recent publication, the HPA Cell Atlas team, with Devin Sullivan and Casper Winsnes as lead authors, demonstrated the promise of both citizen science and artificial intelligence in describing the location of human proteins in images, however current results have yet to approach expert-level annotations (Sullivan et al, Nature Biotechnology, Oct 2018).

In this competition, Kagglers will push this idea further to develop models capable of classifying mixed patterns of proteins in microscope images. The Human Protein Atlas will use these models to accurately characterize a protein's location - or locations - from an image in high-throughput, and integrate this with their smart-microscopy system.

"I look forward to seeing the innovative and diverse approaches the community brings to solving the problem of protein localization from images", Sullivan says."This approach has the potential to improve studies of protein and cell function, and increase our ability to understand human biology and disease", Lundberg says.

URL to challenge: https://www.kaggle.com/c/human-protein-atlas-image-classification/