Literature DB >> 35654878

Natural Language Processing for Imaging Protocol Assignment: Machine Learning for Multiclass Classification of Abdominal CT Protocols Using Indication Text Data.

Brian Arun Xavier1, Po-Hao Chen2.   

Abstract

A correct protocol assignment is critical to high-quality imaging examinations, and its automation can be amenable to natural language processing (NLP). Assigning protocols for abdominal imaging CT scans is particularly challenging given the multiple organ specific indications and parameters. We compared conventional machine learning, deep learning, and automated machine learning builder workflows for this multiclass text classification task. A total of 94,501 CT studies performed over 4 years and their assigned protocols were obtained. Text data associated with each study including the ordering provider generated free text study indication and ICD codes were used for NLP analysis and protocol class prediction. The data was classified into one of 11 abdominal CT protocol classes before and after augmentations used to account for imbalances in the class sample sizes. Four machine learning (ML) algorithms, one deep learning algorithm, and an automated machine learning (AutoML) builder were used for the multilabel classification task: Random Forest (RF), Tree Ensemble (TE), Gradient Boosted Tree (GBT), multi-layer perceptron (MLP), Universal Language Model Fine-tuning (ULMFiT), and Google's AutoML builder (Alphabet, Inc., Mountain View, CA), respectively. On the unbalanced dataset, the manually coded algorithms all performed similarly with F1 scores of 0.811 for RF, 0.813 for TE, 0.813 for GBT, 0.828 for MLP, and 0.847 for ULMFiT. The AutoML builder performed better with a F1 score of 0.854. On the balanced dataset, the tree ensemble machine learning algorithm performed the best with an F1 score of 0.803 and a Cohen's kappa of 0.612. AutoML methods took a longer time for completion of NLP model training and evaluation, 4 h and 45 min compared to an average of 51 min for manual methods. Machine learning and natural language processing can be used for the complex multiclass classification task of abdominal imaging CT scan protocol assignment.
© 2022. The Author(s).

Entities:  

Keywords:  Abdominal imaging; Deep learning; Machine learning; Natural language processing; Protocol

Mesh:

Year:  2022        PMID: 35654878      PMCID: PMC9582109          DOI: 10.1007/s10278-022-00633-8

Source DB:  PubMed          Journal:  J Digit Imaging        ISSN: 0897-1889            Impact factor:   4.903


  12 in total

1.  The effects of changes in utilization and technological advancements of cross-sectional imaging on radiologist workload.

Authors:  Robert J McDonald; Kara M Schwartz; Laurence J Eckel; Felix E Diehn; Christopher H Hunt; Brian J Bartholmai; Bradley J Erickson; David F Kallmes
Journal:  Acad Radiol       Date:  2015-07-22       Impact factor: 3.173

Review 2.  Disruption of Radiologist Workflow.

Authors:  Akash P Kansagra; Kevin Liu; John-Paul J Yu
Journal:  Curr Probl Diagn Radiol       Date:  2015-06-05

3.  The Increasing Use of Emergency Department Imaging in the United States: Is It Appropriate?

Authors:  Santosh Kumar Selvarajan; David C Levin; Laurence Parker
Journal:  AJR Am J Roentgenol       Date:  2019-06-25       Impact factor: 3.959

4.  Workflow Dynamics and the Imaging Value Chain: Quantifying the Effect of Designating a Nonimage-Interpretive Task Workflow.

Authors:  Matthew H Lee; Andrew J Schemmel; B Dustin Pooler; Taylor Hanley; Tabassum A Kennedy; Aaron S Field; Douglas Wiegmann; John-Paul J Yu
Journal:  Curr Probl Diagn Radiol       Date:  2016-11-15

5.  Reducing interruptions during duty radiology shifts, assessment of its benefits and review of factors affecting the radiology working environment.

Authors:  L T O Bell; R James; J A Rosa; A Pollentine; G Pettet; P McCoubrie
Journal:  Clin Radiol       Date:  2018-05-28       Impact factor: 2.350

6.  Imbalanced Deep Learning by Minority Class Incremental Rectification.

Authors: 
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2018-05-03       Impact factor: 6.226

7.  Automatic Determination of the Need for Intravenous Contrast in Musculoskeletal MRI Examinations Using IBM Watson's Natural Language Processing Algorithm.

Authors:  Hari Trivedi; Joseph Mesterhazy; Benjamin Laguna; Thienkhai Vu; Jae Ho Sohn
Journal:  J Digit Imaging       Date:  2018-04       Impact factor: 4.056

8.  Efficiency Improvement in a Busy Radiology Practice: Determination of Musculoskeletal Magnetic Resonance Imaging Protocol Using Deep-Learning Convolutional Neural Networks.

Authors:  Young Han Lee
Journal:  J Digit Imaging       Date:  2018-10       Impact factor: 4.056

Review 9.  Essential Elements of Natural Language Processing: What the Radiologist Should Know.

Authors:  Po-Hao Chen
Journal:  Acad Radiol       Date:  2019-09-17       Impact factor: 3.173

10.  Deep Learning-Based Natural Language Processing in Radiology: The Impact of Report Complexity, Disease Prevalence, Dataset Size, and Algorithm Type on Model Performance.

Authors:  A W Olthof; P M A van Ooijen; L J Cornelissen
Journal:  J Med Syst       Date:  2021-09-04       Impact factor: 4.460

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.