- Wang, Yiping;
- Fan, Joy Linyue;
- Melms, Johannes C;
- Amin, Amit Dipak;
- Georgis, Yohanna;
- Barrera, Irving;
- Ho, Patricia;
- Tagore, Somnath;
- Abril-Rodríguez, Gabriel;
- He, Siyu;
- Jin, Yinuo;
- Biermann, Jana;
- Hofree, Matan;
- Caprio, Lindsay;
- Berhe, Simon;
- Khan, Shaheer A;
- Henick, Brian S;
- Ribas, Antoni;
- Macosko, Evan Z;
- Chen, Fei;
- Taylor, Alison M;
- Schwartz, Gary K;
- Carvajal, Richard D;
- Azizi, Elham;
- Izar, Benjamin
Single-cell genomics enables dissection of tumor heterogeneity and molecular underpinnings of drug response at an unprecedented resolution1-11. However, broad clinical application of these methods remains challenging, due to several practical and preanalytical challenges that are incompatible with typical clinical care workflows, namely the need for relatively large, fresh tissue inputs. In the present study, we show that multimodal, single-nucleus (sn)RNA/T cell receptor (TCR) sequencing, spatial transcriptomics and whole-genome sequencing (WGS) are feasible from small, frozen tissues that approximate routinely collected clinical specimens (for example, core needle biopsies). Compared with data from sample-matched fresh tissue, we find a similar quality in the biological outputs of snRNA/TCR-seq data, while reducing artifactual signals and compositional biases introduced by fresh tissue processing. Profiling sequentially collected melanoma samples from a patient treated in the KEYNOTE-001 trial12, we resolved cellular, genomic, spatial and clonotype dynamics that represent molecular patterns of heterogeneous intralesional evolution during anti-programmed cell death protein 1 therapy. To demonstrate applicability to banked biospecimens of rare diseases13, we generated a single-cell atlas of uveal melanoma liver metastasis with matched WGS data. These results show that single-cell genomics from archival, clinical specimens is feasible and provides a framework for translating these methods more broadly to the clinical arena.