Title :
Using machine learning to identify benign cases with non-definitive biopsy
Author :
Kuusisto, Finn ; Dutra, Ines ; Nassif, Houssam ; Yirong Wu ; Klein, Molly E. ; Neuman, Heather B. ; Shavlik, Jude ; Burnside, Elizabeth S.
Author_Institution :
Univ. of Wisconsin-Madison, Madison, WI, USA
Abstract :
When mammography reveals a suspicious finding, a core needle biopsy is usually recommended. In 5% to 15% of these cases, the biopsy diagnosis is non-definitive and a more invasive surgical excisional biopsy is recommended to confirm a diagnosis. The majority of these cases will ultimately be proven benign. The use of excisional biopsy for diagnosis negatively impacts patient quality of life and increases costs to the healthcare system. In this work, we employ a multi-relational machine learning approach to predict when a patient with a non-definitive core needle biopsy diagnosis need not undergo an excisional biopsy procedure because the risk of malignancy is low.
Keywords :
cancer; health care; learning (artificial intelligence); mammography; medical diagnostic computing; benign case identification; healthcare system; invasive surgical excisional biopsy; mammography; multirelational machine learning approach; nondefinitive core needle biopsy diagnosis; Biomedical imaging; Heating; Medical services;
Conference_Titel :
e-Health Networking, Applications & Services (Healthcom), 2013 IEEE 15th International Conference on
Conference_Location :
Lisbon
Print_ISBN :
978-1-4673-5800-2
DOI :
10.1109/HealthCom.2013.6720685