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Detection and Localization of Solid Tumors Utilizing the Cancer-Type-Specific Mutational Signatures

Authors :
Ziyu Wang
Tingting Zhang
Wei Wu
Lingxiang Wu
Jie Li
Bin Huang
Yuan Liang
Yan Li
Pengping Li
Kening Li
Wei Wang
Renhua Guo
Qianghu Wang
Source :
Frontiers in Bioengineering and Biotechnology. 10
Publication Year :
2022
Publisher :
Frontiers Media SA, 2022.

Abstract

Accurate detection and location of tumor lesions are essential for improving the diagnosis and personalized cancer therapy. However, the diagnosis of lesions with fuzzy histology is mainly dependent on experiences and with low accuracy and efficiency. Here, we developed a logistic regression model based on mutational signatures (MS) for each cancer type to trace the tumor origin. We observed MS could distinguish cancer from inflammation and healthy individuals. By collecting extensive datasets of samples from ten tumor types in the training cohort (5,001 samples) and independent testing cohort (2,580 samples), cancer-type-specific MS patterns (CTS-MS) were identified and had a robust performance in distinguishing different types of primary and metastatic solid tumors (AUC:0.76 ∼ 0.93). Moreover, we validated our model in an Asian population and found that the AUC of our model in predicting the tumor origin of the Asian population was higher than 0.7. The metastatic tumor lesions inherited the MS pattern of the primary tumor, suggesting the capability of MS in identifying the tissue-of-origin for metastatic cancers. Furthermore, we distinguished breast cancer and prostate cancer with 90% accuracy by combining somatic mutations and CTS-MS from cfDNA, indicating that the CTS-MS could improve the accuracy of cancer-type prediction by cfDNA. In summary, our study demonstrated that MS was a novel reliable biomarker for diagnosing solid tumors and provided new insights into predicting tissue-of-origin.

Details

ISSN :
22964185
Volume :
10
Database :
OpenAIRE
Journal :
Frontiers in Bioengineering and Biotechnology
Accession number :
edsair.doi.dedup.....1212740f82212915ca3f580a6f0f5a1b
Full Text :
https://doi.org/10.3389/fbioe.2022.883791