Protocol parameter extraction and centralization framework for comprehensive and in‐depth CT protocol review and management

Author:

LaBella Andy1ORCID,Zhang Da2ORCID

Affiliation:

1. Department of Radiology Stony Brook University Stony Brook New York USA

2. Department of Radiology Boston Children's Hospital Harvard Medical School Boston Massachusetts USA

Abstract

AbstractCT protocol management is an arduous task that requires expertise from a variety of radiology professionals, including technologists, radiologists, radiology IT professionals, and medical physicists. Each CT vendor has unique, proprietary protocol file structures, some of which may vary by scanner model, making it difficult to develop a universal framework for distilling technical parameters to a human‐readable file format. An ideal solution for CT protocol management is to minimize the work required for parameter extraction by introducing a data format into the workflow that is universal to all CT scanners.In this paper, we report a framework for CT protocol management that converts raw protocol files to an intermediary format before outputting them in a human‐readable format for a variety of practical clinical applications, including routine protocol review, protocol version tracking, and cross‐protocol comparisons.The framework was developed in Python 3. Technical parameters of interest were determined via collaborative effort between medical physicists and lead technologists. Protocol files were extracted and analyzed from a variety of scanners across our hospital‐wide CT fleet, including various systems from Siemens and GE. Protocols were subcategorized based on relevant technical parameters into regular, dual‐energy, and cardiac CT protocols. Backend code for technical parameter extraction from raw protocol files to a JavaScript Object Notation (JSON) format was performed on a per‐system basis. Conversion from JSON to a readable output format (MS Excel) was performed identically for all scanners using the universal framework developed and presented in this work. Example results for Siemens and GE scanners are shown, including side‐by‐side comparisons for protocols with similar clinical indications.In conclusion, our CT protocol management framework may be deployed on any CT system to improve clinical efficiency in protocol review and upkeep.

Publisher

Wiley

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