Back to Search
Start Over
Automatic extraction of cancer registry reportable information from free-text pathology reports using multitask convolutional neural networks
- Source :
- Journal of the American Medical Informatics Association : JAMIA
- Publication Year :
- 2019
- Publisher :
- Oxford University Press (OUP), 2019.
-
Abstract
- Objective We implement 2 different multitask learning (MTL) techniques, hard parameter sharing and cross-stitch, to train a word-level convolutional neural network (CNN) specifically designed for automatic extraction of cancer data from unstructured text in pathology reports. We show the importance of learning related information extraction (IE) tasks leveraging shared representations across the tasks to achieve state-of-the-art performance in classification accuracy and computational efficiency. Materials and Methods Multitask CNN (MTCNN) attempts to tackle document information extraction by learning to extract multiple key cancer characteristics simultaneously. We trained our MTCNN to perform 5 information extraction tasks: (1) primary cancer site (65 classes), (2) laterality (4 classes), (3) behavior (3 classes), (4) histological type (63 classes), and (5) histological grade (5 classes). We evaluated the performance on a corpus of 95 231 pathology documents (71 223 unique tumors) obtained from the Louisiana Tumor Registry. We compared the performance of the MTCNN models against single-task CNN models and 2 traditional machine learning approaches, namely support vector machine (SVM) and random forest classifier (RFC). Results MTCNNs offered superior performance across all 5 tasks in terms of classification accuracy as compared with the other machine learning models. Based on retrospective evaluation, the hard parameter sharing and cross-stitch MTCNN models correctly classified 59.04% and 57.93% of the pathology reports respectively across all 5 tasks. The baseline models achieved 53.68% (CNN), 46.37% (RFC), and 36.75% (SVM). Based on prospective evaluation, the percentages of correctly classified cases across the 5 tasks were 60.11% (hard parameter sharing), 58.13% (cross-stitch), 51.30% (single-task CNN), 42.07% (RFC), and 35.16% (SVM). Moreover, hard parameter sharing MTCNNs outperformed the other models in computational efficiency by using about the same number of trainable parameters as a single-task CNN. Conclusions The hard parameter sharing MTCNN offers superior classification accuracy for automated coding support of pathology documents across a wide range of cancers and multiple information extraction tasks while maintaining similar training and inference time as those of a single task–specific model.
- Subjects :
- Pathology
medicine.medical_specialty
Support Vector Machine
Computer science
convolutional neural network
Information Storage and Retrieval
Multi-task learning
Inference
Health Informatics
02 engineering and technology
Research and Applications
computer.software_genre
Convolutional neural network
Machine Learning
03 medical and health sciences
Neoplasms
0202 electrical engineering, electronic engineering, information engineering
medicine
Humans
information extraction
Registries
natural language processing
030304 developmental biology
0303 health sciences
business.industry
Deep learning
deep learning
cancer pathology reports
multitask learning
Random forest
Support vector machine
Information extraction
020201 artificial intelligence & image processing
Neural Networks, Computer
Artificial intelligence
business
computer
Coding (social sciences)
Subjects
Details
- ISSN :
- 1527974X
- Volume :
- 27
- Database :
- OpenAIRE
- Journal :
- Journal of the American Medical Informatics Association
- Accession number :
- edsair.doi.dedup.....7e4db5208afdf79986ff10ebfde95729