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Semiautomated Pipeline to Quantify Tumor Evolution From Real-World Positron Emission Tomography/Computed Tomography Imaging
3
Zitationen
16
Autoren
2023
Jahr
Abstract
PURPOSE: A semiautomated pipeline for the collection and curation of free-text and imaging real-world data (RWD) was developed to quantify cancer treatment outcomes in large-scale retrospective real-world studies. The objectives of this article are to illustrate the challenges of RWD extraction, to demonstrate approaches for quality assurance, and to showcase the potential of RWD for precision oncology. METHODS: We collected data from patients with advanced melanoma receiving immune checkpoint inhibitors at the Lausanne University Hospital. Cohort selection relied on semantically annotated electronic health records and was validated using process mining. The selected imaging examinations were segmented using an automatic commercial software prototype. A postprocessing algorithm enabled longitudinal lesion identification across imaging time points and consensus malignancy status prediction. Resulting data quality was evaluated against expert-annotated ground-truth and clinical outcomes obtained from radiology reports. RESULTS: = .89). CONCLUSION: We presented a general pipeline for the collection and curation of text- and image-based RWD, together with specific strategies to improve reliability. We showed that the resulting disease progression measures match reference clinical assessments at the cohort level, indicating that this strategy has the potential to unlock large amounts of actionable retrospective real-world evidence from clinical records.
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Autoren
Institutionen
- HES-SO University of Applied Sciences and Arts Western Switzerland(CH)
- University of Lausanne(CH)
- Université Claude Bernard Lyon 1(FR)
- Inserm(FR)
- Hospices Civils de Lyon(FR)
- Laboratoire CarMeN(FR)
- Merck (Germany)(DE)
- University of Geneva(CH)
- SIB Swiss Institute of Bioinformatics(CH)
- Cornell University(US)
- Weill Cornell Medicine(US)