Fast adaptive structured reporting for decision support in radiology

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Abstract/Contents

Abstract
Radiology is a powerful tool to detect and diagnose abnormalities by allowing doctors to visually inspect internal pathology that could not otherwise be seen. However, assessing radiological images is limited by variations among practitioners, including deficiencies in their reporting of these imaging examinations as well as in their interpretations. Three main sources of these variations in interpretation are incorrectness of observations in the images, incompleteness of the radiological observations reported to characterize the abnormalities, and inconsistency of these observations with respect to the radiologists' overall impression. I hypothesized that delivering decision support during reporting time to improve completeness and correctness of reports would improve consistency, and therefore, diagnostic performance To test this hypothesis, I formulated a decision support framework that provides feedback to radiologists during the reporting of their radiological observations. I developed this system by creating novel statistical models to link radiological observations, computational imaging features, and disease to recognize incorrectness, incompleteness and inconsistency in reporting. I then harnessed these models to create a quantifiable metric of observation quality. In this dissertation, I describe this system with the following specific aims: (1) developed methods to assess completeness and correctness of radiology reports, (2) evaluated these methods in two important radiological domains (mammography and liver CT), and (3) developed framework to provide feedback to radiologist to ensure consistency between report and diagnosis, improving diagnostic performance. I performed three major experiments to verify these aims. In my first project, I developed an image annotation classifier that predicts the descriptors a radiologist would use in a report to describe a liver lesion on a CT scan. I predicted 30 different types of descriptors and had a mean AUC of 0.816 ± 0.141 with a misclassification rate of 0.1443 ± 0.0881. These results showed that the image annotation framework could be used as a second reader for radiological reports. In my next project, I developed a novel metric to measure whether reports had enough information to justify the radiologist's diagnosis. I found that this measure could accurately predict when radiologists make errors based solely on the evidence they give to justify their diagnosis, with 82.6% classification accuracy. Finally, I created a framework to deliver feedback to the radiologist in order to complete their report in the most efficient manner. I found that using the aforementioned incompleteness score coupled with a myopic, mutual information descriptor selection criteria allows a decision support system to achieve 93.6% diagnostic classification accuracy with an average of 4 observations. This achieves better classification accuracy than the decision support system that uses all 20 descriptors by 1.5%. The results from these three experiments showed that it is feasible to deliver decision support to improve reports, and that improving reports improves diagnostic performance.

Description

Type of resource text
Form electronic; electronic resource; remote
Extent 1 online resource.
Publication date 2015
Issuance monographic
Language English

Creators/Contributors

Associated with Giménez, Francisco Jose
Associated with Stanford University, Department of Biomedical Informatics.
Primary advisor Rubin, Daniel
Thesis advisor Rubin, Daniel
Thesis advisor Musen, Mark A
Thesis advisor Shachter, Ross D
Advisor Musen, Mark A
Advisor Shachter, Ross D

Subjects

Genre Theses

Bibliographic information

Statement of responsibility Francisco Jose Giménez.
Note Submitted to the Department of Biomedical Informatics.
Thesis Thesis (Ph.D.)--Stanford University, 2015.
Location electronic resource

Access conditions

Copyright
© 2015 by Francisco Jose Gimenez
License
This work is licensed under a Creative Commons Attribution Non Commercial 3.0 Unported license (CC BY-NC).

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