Tools for large-scale data analytics of an international multi-center study in radiation oncology for cervical cancer

Publication date

2023-05

Authors

Ecker, Stefan
Kirisits, Christian
Schmid, Maximilian
de Leeuw, A. E.ISNI 0000000392159395
Seppenwoolde, Yvette
Knoth, Johannes
Trnkova, Petra
Heilemann, Gerd
Sturdza, Alina
Kirchheiner, Kathrin

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Advisors

Supervisors

Document Type

Article

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cc_by

Abstract

PURPOSE: To develop and implement a software that enables centers, treating patients with state-of-the-art radiation oncology, to compare their patient, treatment, and outcome data to a reference cohort, and to assess the quality of their treatment approach. MATERIALS AND METHODS: A comprehensive data dashboard was designed, which al- lowed holistic assessment of institutional treatment approaches. The software was tested in the ongoing EMBRACE-II study for locally advanced cervical cancer. The tool created individualized dashboards and automatic analysis scripts, verified pro- tocol compliance and checked data for inconsistencies. Identified quality assurance (QA) events were analysed. A survey among users was conducted to assess usability. RESULTS: The survey indicated favourable feedback to the prototype and highlighted its value for internal monitoring. Overall, 2302 QA events were identified (0.4% of all collected data). 54% were due to missing or incomplete data, and 46% originated from other causes. At least one QA event was found in 519/1001 (52%) of patients. QA events related to primary study endpoints were found in 16% of patients. Sta- tistical methods demonstrated good performance in detecting anomalies, with precisions ranging from 71% to 100%. Most frequent QA event categories were Treatment Technique (27%), Patient Characteristics (22%), Dose Reporting (17%), Outcome 156 (15%), Outliers (12%), and RT Structures (8%). CONCLUSION: A software tool was developed and tested within a clinical trial in radia- tion oncology. It enabled the quantitative and qualitative comparison of institutional patient and treatment parameters with a large multi-center reference cohort. We demonstrated the value of using statistical methods to automatically detect implau- sible data points and highlighted common pitfalls and uncertainties in radiotherapy for cervical cancer.

Keywords

Data Science, Female, Humans, Quality Assurance, Health Care/methods, Radiation Oncology, Radiotherapy Planning, Computer-Assisted, Surveys and Questionnaires, Uterine Cervical Neoplasms/radiotherapy, IGABT, Clinical trial monitoring, Data analytics, Cervical cancer, Hematology, Oncology, Radiology Nuclear Medicine and imaging, Multicenter Study, Journal Article, Research Support, Non-U.S. Gov't

Citation

Ecker, S, Kirisits, C, Schmid, M, De Leeuw, A, Seppenwoolde, Y, Knoth, J, Trnkova, P, Heilemann, G, Sturdza, A, Kirchheiner, K, Spampinato, S, Serban, M, Jürgenliemk-Schulz, I, Chopra, S, Nout, R, Tanderup, K, Pötter, R & Eder-Nesvacil, N 2023, 'Tools for large-scale data analytics of an international multi-center study in radiation oncology for cervical cancer', Radiotherapy and oncology : journal of the European Society for Therapeutic Radiology and Oncology, vol. 182, 109524. https://doi.org/10.1016/j.radonc.2023.109524