PRISM: Recovering cell type specific expression profiles from individual composite RNA-seq samples




Häkkinen Antti, Zhang Kaiyang, Alkodsi Amjad, Andersson Noora, Pekcan Erkan Erdogan, Dai Jun, Kaipio Katja, Lamminen Tarja, Mansuri Naziha, Huhtinen Kaisa, Vähärautio Anna, Carpén Olli, Hynninen Johanna, Hietanen Sakari, Lehtonen Rainer, Hautaniemi Sampsa

PublisherOxford Academic

2021

Bioinformatics

Bioinformatics

37

18

2882

2888

1367-4811

DOIhttps://doi.org/10.1093/bioinformatics/btab178

https://academic.oup.com/bioinformatics/article/37/18/2882/6171182

https://research.utu.fi/converis/portal/detail/Publication/68088348



Motivation: A major challenge in analyzing cancer patient transcriptomes is that the tumors are inherently heterogeneous and evolving. We analyzed 214 bulk RNA samples of a longitudinal, prospective ovarian cancer cohort and found that the sample composition changes systematically due to chemotherapy and between the anatomical sites, preventing direct comparison of treatment-naive and treated samples.

Results: To overcome this, we developed PRISM, a latent statistical framework to simultaneously extract the sample composition and cell type specific whole-transcriptome profiles adapted to each individual sample. Our results indicate that the PRISM-derived composition-free transcriptomic profiles and signatures derived from them predict the patient response better than the composite raw bulk data. We validated our findings in independent ovarian cancer and melanoma cohorts, and verified that PRISM accurately estimates the composition and cell type specific expression through whole-genome sequencing and RNA in situ hybridization experiments.


Last updated on 2024-26-11 at 10:36