Vol 27, No 1 (2022)
Research paper
Published online: 2022-01-27

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Dosimetric accuracy of three dose calculation algorithms for radiation therapy of in situ non-small cell lung carcinoma

Manda Švabić Kolacio1, David Rajlić1, Milan Radojčić12, Ðeni Smilović Radojčić13, Nevena Obajdin1, Dea Dundara Debeljuh134, Slaven Jurković13
Rep Pract Oncol Radiother 2022;27(1):86-96.

Abstract

Background: Study determines differences in calculated dose distributions for non-small cell lung carcinoma (NSCLC) patients. NSCLC cases were investigated, being the most common lung cancer treated by radiotherapy in our clinical practice.

Materials and methods: A retrospective study of 15 NSCLC patient dose distributions originally calculated using standard superposition (SS) and recalculated using collapsed cone (CC) and Monte Carlo (MC) based algorithm expressed as dose to medium in medium (MCDm) and dose to water in medium (MCDw,) was performed so that prescribed dose covers at least 99% of the gross target volume (GTV).

Statistical analysis was performed for differences of conformity index (CI), heterogeneity index (HI), gradient index (GI), dose delivered to 2% of the volume (D2%), mean dose (Dmean) and percentage of volumes covered by prescribed dose (V70Gy). For organs at risk (OARs), Dmean and percentage of volume receiving 20 Gy and 5Gy (V20Gy, V5Gy) were analysed.

Results: Statistically significant difference for GTVs was observed between MCDw and SS algorithm in mean dose only. For planning target volumes (PTVs), statistically significant differences were observed in prescribed dose coverage for CC, MCDm and MCDw. The differences in mean CI value for the CC algorithm and mean HI value for MCDm and MCDw were statistically significant. There is a statistically significant difference in the number of MUs for MCDm and MCDw compared to SS.

Conclusion: All investigated algorithms succeed in managing the restrictive conditions of the clinical goals. This study shows the drawbacks of the CC algorithm compared to other algorithms used.

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