Machine Learning Applications in Nephrology: A Bibliometric Analysis Comparing Kidney Studies to Other Medicine Subspecialities

Kidney Medicine - Tập 3 - Trang 762-767 - 2021
Ashish Verma1,2, Vipul C. Chitalia2,3, Sushrut S. Waikar2, Vijaya B. Kolachalama4,5
1Renal Division, Brigham and Women’s Hospital, Boston, MA
2Section of Nephrology, Boston University School of Medicine and Boston Medical Center, Boston, MA
3Boston Veterans Affairs Healthcare System, Boston, MA
4Section of Computational Biomedicine, Department of Medicine, School of Medicine, Boston University, Boston, MA
5Department of Computer Science and Faculty of Computing & Data Sciences, Boston University, Boston, MA

Tài liệu tham khảo

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