菜单

关于 🐙 GitHub
arXiv 提交日期: 2026-02-23
📄 Abstract - Transcending the Annotation Bottleneck: AI-Powered Discovery in Biology and Medicine

The dependence on expert annotation has long constituted the primary rate-limiting step in the application of artificial intelligence to biomedicine. While supervised learning drove the initial wave of clinical algorithms, a paradigm shift towards unsupervised and self-supervised learning (SSL) is currently unlocking the latent potential of biobank-scale datasets. By learning directly from the intrinsic structure of data - whether pixels in a magnetic resonance image (MRI), voxels in a volumetric scan, or tokens in a genomic sequence - these methods facilitate the discovery of novel phenotypes, the linkage of morphology to genetics, and the detection of anomalies without human bias. This article synthesises seminal and recent advances in "learning without labels," highlighting how unsupervised frameworks can derive heritable cardiac traits, predict spatial gene expression in histology, and detect pathologies with performance that rivals or exceeds supervised counterparts.

顶级标签: medical biology machine learning
详细标签: self-supervised learning unsupervised learning biomedical ai phenotype discovery anomaly detection 或 搜索:

超越标注瓶颈:人工智能驱动的生物学与医学发现 / Transcending the Annotation Bottleneck: AI-Powered Discovery in Biology and Medicine


1️⃣ 一句话总结

这篇论文指出,通过采用无监督和自监督学习方法,人工智能可以直接从生物医学数据(如医学影像和基因组序列)中学习其内在结构,从而摆脱对专家标注的依赖,实现新表型发现、形态与基因关联以及无偏异常检测,其性能甚至能媲美或超越传统有监督方法。

源自 arXiv: 2602.20100