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Why Attention Graphs Are All We Need: Pioneering Hierarchical Classification of Hematologic Cell Populations with LeukoGraph (2402.18610v1)

Published 28 Feb 2024 in cs.LG and q-bio.CB

Abstract: In the complex landscape of hematologic samples such as peripheral blood or bone marrow, cell classification, delineating diverse populations into a hierarchical structure, presents profound challenges. This study presents LeukoGraph, a recently developed framework designed explicitly for this purpose employing graph attention networks (GATs) to navigate hierarchical classification (HC) complexities. Notably, LeukoGraph stands as a pioneering effort, marking the application of graph neural networks (GNNs) for hierarchical inference on graphs, accommodating up to one million nodes and millions of edges, all derived from flow cytometry data. LeukoGraph intricately addresses a classification paradigm where for example four different cell populations undergo flat categorization, while a fifth diverges into two distinct child branches, exemplifying the nuanced hierarchical structure inherent in complex datasets. The technique is more general than this example. A haLLMark achievement of LeukoGraph is its F-score of 98%, significantly outclassing prevailing state-of-the-art methodologies. Crucially, LeukoGraph's prowess extends beyond theoretical innovation, showcasing remarkable precision in predicting both flat and hierarchical cell types across flow cytometry datasets from 30 distinct patients. This precision is further underscored by LeukoGraph's ability to maintain a correct label ratio, despite the inherent challenges posed by hierarchical classifications.

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References (21)
  1. A novel automatic hierachical approach to music genre classification. In Proceedings of the IEEE International Conference on Multimedia and Expo Workshops, pages 564–569. IEEE, July 2012.
  2. Flowcyt: A comparative study of deep learning approaches for multi-class classification in flow cytometry. 2024.
  3. Graph transformer networks for image recognition. Bulletin of the 55th Biennial Session of the International Statistical Institute (ISI), 2005.
  4. Gram: graph-based attention model for healthcare representation learning. In Proceedings of the 23rd ACM SIGKDD international conference on knowledge discovery and data mining, pages 787–795, August 2017.
  5. Convolutional networks on graphs for learning molecular fingerprints. Advances in neural information processing systems, 28, 2015.
  6. Coherent hierarchical multi-label classification networks. Advances in neural information processing systems, 33:9662–9673, 2020.
  7. A sequential pattern mining approach to design taxonomies for hierarchical music genre recognition. Pattern Analysis and Applications, 21(2):363–380, May 2018.
  8. Hierarchical text classification of urdu news using deep neural network. https://arxiv.org/abs/2107.03141, 2021.
  9. Semi-supervised classification with graph convolutional networks. https://openreview.net/pdf?id=SJU4ayYgl, 2017.
  10. Learning and evaluation in the presence of class hierarchies: Application to text categorization. In Proceedings of the Conference of the Canadian Society for Computational Studies of Intelligence, pages 395–406, Québec, Canada, June 2006. Springer Berlin Heidelberg.
  11. Self-attention graph pooling. In International conference on machine learning, pages 3734–3743. PMLR, 2019.
  12. Hybrid embedding-based text representation for hierarchical multi-label text classification. Expert Systems with Applications, 187:115905, May 2022.
  13. Covid-19 identification in chest x-ray images on at and hierarchical classification scenarios. Computer Methods and Programs in Biomedicine, 194:105532, October 2020.
  14. Cheer: hierarchical taxonomic classification for viral metagenomic data via deep learning. Methods, 189:95–103, May 2021.
  15. A survey of hierarchical classifcation across different application domains. Data Mining and Knowledge Discovery, 22(1):31–72, 2011.
  16. Attention is all you need. Advances in neural information processing systems, 30, 2017.
  17. Graph attention networks. stat, 1050(20):10–48550, 2017.
  18. Hierarchical multi-label classification networks. In International conference on machine learning, pages 5075–5084. PMLR, July 2018.
  19. Revisiting semi-supervised learning with graph embeddings. In International conference on machine learning, pages 40–48. PMLR, June 2016.
  20. Graph transformer networks. Advances in neural information processing systems, 32, 2019.
  21. Link prediction based on graph neural networks. Advances in neural information processing systems, 31, 2018.
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