Transcriptome profiling research in urothelial cell carcinoma

Author:

Ahmad Umar12ORCID,Ibrahim Buhari34ORCID,Mohammed Mustapha56ORCID,Aldoghachi Ahmed Faris7ORCID,Usman Mahmood89ORCID,Yakubu Abdulbasit Haliru1011ORCID,Tanko Abubakar Sadiq12ORCID,Bobbo Khadijat Abubakar1314ORCID,Garkuwa Usman Adamu415ORCID,Faggo Abdullahi Adamu16ORCID,Mustapha Sagir17ORCID,Al‐Masaeed Mahmoud1819,Abdullah Syahril713ORCID,Keong Yong Yoke20ORCID,Veerakumarasivam Abhi21ORCID

Affiliation:

1. Molecular Genetics Informatics, Department of Anatomy, Faculty of Basic Medical Science Bauchi State University Gadau Bauchi Nigeria

2. Institute of Pathogen Genomics, Division of Laboratory Systems and Networks, Africa Centres for Disease Control and Prevention (Africa CDC) African Union Commission Addis Ababa Ethiopia

3. Department of Imaging, Faculty of Medicine and Health Sciences Universiti Putra Malaysia Serdang Selangor Malaysia

4. Department of Physiology, Faculty of Basic Medical Sciences Bauchi State University Gadau Bauchi Nigeria

5. Department of Clinical Pharmacy and Pharmacy Practice, Faculty of Pharmaceutical Sciences Ahmadu Bello University Zaria Kaduna Nigeria

6. Vice President for Medical and Health Science Office, QU Health Qatar University Doha Qatar

7. Medical Genetics Laboratory, Genetics and Regenerative Medicine Research Centre, Faculty of Medicine and Health Sciences Universiti Putra Malaysia Serdang Selangor Malaysia

8. Department of Human Anatomy, Faculty of Basic Medical Sciences Ahmadu Bello University Zaria Kaduna Nigeria

9. Department of Human Anatomy, Faculty of Basic Medical Sciences Yusuf Maitama Sule University Kano Nigeria

10. Faculty of Pharmacy University of Maiduguri Maiduguri Borno Nigeria

11. Department of Pharmaceutical Service University of Maiduguri Teaching Hospital Maiduguri Borno Nigeria

12. Department of Biochemistry, Faculty of Science Bauchi State University Gadau Bauchi Nigeria

13. UPM‐MAKANA Cancer Research Laboratory, Institute of Bioscience Universiti Putra Malaysia Serdang Selangor Malaysia

14. Department of Anatomy, Faculty of Basic Medical Sciences Gombe State University Gombe Nigeria

15. Department of Human Physiology, Faculty of Basic Medical Sciences Ahmadu Bello University Zaria Kaduna Nigeria

16. Department of Microbiology, Faculty of Science Bauchi State University Gadau Bauchi Nigeria

17. Department of Pharmacology Universiti Sains Malaysia Kota Bharu Kelantan Malaysia

18. Department of Nursing, Faculty of Health and Medicine University of Newcastle Newcastle New South Wales Australia

19. Faculty of Medicine and Health Sciences Universiti Putra Malaysia Serdang Selangor Malaysia

20. Department of Human Anatomy, Faculty of Medicine and Health Sciences Universiti Putra Malaysia Serdang Selangor Malaysia

21. Department of Medical Sciences, School of Healthcare and Medical Sciences Sunway University Bandar Sunway Selangor Malaysia

Abstract

AbstractUrothelial cell carcinoma (UCC) is the ninth most common cancer that accounts for 4.7% of all new cancer cases globally. UCC development and progression are due to complex and stochastic genetic programs. To study the cascades of molecular events underlying the poor prognosis that may lead to limited treatment options for advanced disease and resistance to conventional therapies in UCC, transcriptomics technology (RNA‐Seq), a method of analyzing the RNA content of a sample using modern high‐throughput sequencing platforms has been employed. Here, we review the principles of RNA‐Seq technology and summarize recent studies on human bladder cancer that employed this technique to unravel the pathogenesis of the disease, identify biomarkers, discover pathways and classify the disease state. We list the commonly used computational platforms and software that are publicly available for RNA‐Seq analysis. Moreover, we discussed the future perspectives for RNA‐Seq studies on bladder cancer and recommended the application of a new technology called single‐cell sequencing to further understand the disease.

Publisher

Wiley

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