Performance measurement and data base design
Alfonso P. Cardenas, Larry F. Bowman, et al.
ACM Annual Conference 1975
We introduce an extensible and modifiable knowledge representation model to represent cancer disease characteristics in a comparable and consistent fashion. We describe a system, MedTAS/P which automatically instantiates the knowledge representation model from free-text pathology reports. MedTAS/P is based on an open-source framework and its components use natural language processing principles, machine learning and rules to discover and populate elements of the model. To validate the model and measure the accuracy of MedTAS/P, we developed a gold-standard corpus of manually annotated colon cancer pathology reports. MedTAS/P achieves F1-scores of 0.97-1.0 for instantiating classes in the knowledge representation model such as histologies or anatomical sites, and F1-scores of 0.82-0.93 for primary tumors or lymph nodes, which require the extractions of relations. An F1-score of 0.65 is reported for metastatic tumors, a lower score predominantly due to a very small number of instances in the training and test sets. © 2009 Elsevier Inc. All rights reserved.
Alfonso P. Cardenas, Larry F. Bowman, et al.
ACM Annual Conference 1975
Rajiv Ramaswami, Kumar N. Sivarajan
IEEE/ACM Transactions on Networking
Maciel Zortea, Miguel Paredes, et al.
IGARSS 2021
Michael Ray, Yves C. Martin
Proceedings of SPIE - The International Society for Optical Engineering