Abstract
Discovering evolutionary traits that are heritable across species on the tree of life (also referred to as a phylogenetic tree) is of great interest to biologists to understand how organisms diversify and evolve. However, the measurement of traits is often a subjective and labor-intensive process, making trait discovery a highly label-scarce problem. We present a novel approach for discovering evolutionary traits directly from images without relying on trait labels. Our proposed approach, Phylo-NN, encodes the image of an organism into a sequence of quantized feature vectors -or codes- where different segments of the sequence capture evolutionary signals at varying ancestry levels in the phylogeny. We demonstrate the effectiveness of our approach in producing biologically meaningful results in a number of downstream tasks including species image generation and species-to-species image translation, using fish species as a target example
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CITATION STYLE
Elhamod, M., Khurana, M., Manogaran, H. B., Uyeda, J. C., Balk, M. A., Dahdul, W., … Karpatne, A. (2023). Discovering Novel Biological Traits from Images Using Phylogeny-Guided Neural Networks. In Proceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (pp. 3966–3978). Association for Computing Machinery. https://doi.org/10.1145/3580305.3599808
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