| Literature DB >> 34071263 |
Ali Al-Fatlawi1, Negin Malekian1, Sebastián García2, Andreas Henschel3, Ilwook Kim1, Andreas Dahl4, Beatrix Jahnke2, Peter Bailey5, Sarah Naomi Bolz1, Anna R Poetsch1,6, Sandra Mahler7, Robert Grützmann5, Christian Pilarsky5, Michael Schroeder1.
Abstract
For optimal pancreatic cancer treatment, early and accurate diagnosis is vital. Blood-derived biomarkers and genetic predispositions can contribute to early diagnosis, but they often have limited accuracy or applicability. Here, we seek to exploit the synergy between them by combining the biomarker CA19-9 with RNA-based variants. We use deep sequencing and deep learning to improve differentiating pancreatic cancer and chronic pancreatitis. We obtained samples of nucleated cells found in peripheral blood from 268 patients suffering from resectable, non-resectable pancreatic cancer, and chronic pancreatitis. We sequenced RNA with high coverage and obtained millions of variants. The high-quality variants served as input together with CA19-9 values to deep learning models. Our model achieved an area under the curve (AUC) of 96% in differentiating resectable cancer from pancreatitis using a test cohort. Moreover, we identified variants to estimate survival in resectable cancer. We show that the blood transcriptome harbours variants, which can substantially improve noninvasive clinical diagnosis.Entities:
Keywords: chronic pancreatitis; deep learning; pancreatic cancer; transcriptome-wide association study
Year: 2021 PMID: 34071263 DOI: 10.3390/cancers13112654
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.639