Clinical evaluation of atlas-based auto-segmentation in breast and nodal radiotherapy

Author:

Welgemoed Camarie12ORCID,Spezi Emiliano3,Riddle Pippa1,Gooding Mark J4,Gujral Dorothy12,McLauchlan Ruth56,Aboagye Eric O2

Affiliation:

1. Radiotherapy Department, Imperial College Healthcare NHS Trust, Charing Cross Hospital, London, United Kingdom

2. Department of Surgery and Cancer, Imperial College London, Hammersmith Campus, London, United Kingdom

3. School of Engineering, Cardiff University, Cardiff, United Kingdom

4. Mirada Science Group, Oxford, United Kingdom

5. Department of Radiation Physics & Radiobiology, Imperial College Healthcare NHS Trust, Charing Cross Hospital, London, United Kingdom

6. Blackett Laboratory, Imperial College London, South Kensington Campus, London, United Kingdom

Abstract

Objectives: Accurate contouring of anatomical structures allows for high-precision radiotherapy planning, targeting the dose at treatment volumes and avoiding organs at risk. Manual contouring is time-consuming with significant user variability, whereas auto-segmentation (AS) has proven efficiency benefits but requires editing before treatment planning. This study investigated whether atlas-based AS (ABAS) accuracy improves with template atlas group size and character-specific atlas and test case selection. Methods and materials: One clinician retrospectively contoured the breast, nodes, lung, heart, and brachial plexus on 100 CT scans, adhering to peer-reviewed guidelines. Atlases were clustered in group sizes, treatment positions, chest wall separations, and ASs created with Mirada software. The similarity of ASs compared to reference contours was described by the Jaccard similarity coefficient (JSC) and centroid distance variance (CDV). Results: Across group sizes, for all structures combined, the mean JSC was 0.6 (SD 0.3, p = .999). Across atlas-specific groups, 0.6 (SD 0.3, p = 1.000). The correlation between JSC and structure volume was weak in both scenarios (adjusted R2−0.007 and 0.185). Mean CDV was similar across groups but varied up to 1.2 cm for specific structures. Conclusions: Character-specific atlas groups and test case selection did not improve accuracy outcomes. High-quality ASs were obtained from groups containing as few as ten atlases, subsequently simplifying the application of ABAS. CDV measures indicating auto-segmentation variations on the x, y, and z axes can be utilised to decide on the clinical relevance of variations and reduce AS editing. Advances in knowledge: High-quality ABASs can be obtained from as few as ten template atlases. Atlas and test case selection do not improve AS accuracy. Unlike well-known quantitative similarity indices, volume displacement metrics provide information on the location of segmentation variations, helping assessment of the clinical relevance of variations and reducing clinician editing. Volume displacement metrics combined with the qualitative measure of clinician assessment could reduce user variability.

Publisher

Oxford University Press (OUP)

Subject

Radiology, Nuclear Medicine and imaging,General Medicine

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