Abstract

Quantifying parenchymal tissue changes in the lungs is imperative in furthering the study of radiation induced lung damage (RILD). Registering lung images from different time-points is a key step of this process. Traditional intensity-based registration approaches fail this task due to the considerable anatomical changes that occur between timepoints. This work proposes a novel method to successfully register longitudinal pre- and post-radiotherapy (RT) lung computed tomography (CT) scans that exhibit large changes due to RILD, by extracting consistent anatomical features from CT (lung boundaries, main airways, vessels) and using these features to optimise the registrations. Pre-RT and 12 month post-RT CT pairs from fifteen lung cancer patients were used for this study, all with varying degrees of RILD, ranging from mild parenchymal change to extensive consolidation and collapse. For each CT, signed distance transforms from segmentations of the lungs and main airways were generated, and the Frangi vesselness map was calculated. These were concatenated into multi-channel images and diffeomorphic multichannel registration was performed for each image pair using NiftyReg. Traditional intensity-based registrations were also performed for comparison purposes. For the evaluation, the pre- and post-registration landmark distance was calculated for all patients, using an average of 44 manually identified landmark pairs per patient. The mean (standard deviation) distance for all datasets decreased from 15.95 (8.09) mm pre-registration to 4.56 (5.70) mm post-registration, compared to 7.90 (8.97) mm for the intensity-based registrations. Qualitative improvements in image alignment were observed for all patient datasets. For four representative subjects, registrations were performed for three additional follow-up timepoints up to 48 months post-RT and similar accuracy was achieved. We have demonstrated that our novel multichannel registration method can successfully align longitudinal scans from RILD patients in the presence of large anatomical changes such as consolidation and atelectasis, outperforming the traditional registration approach both quantitatively and through thorough visual inspection.

Highlights

  • Non-small cell lung cancer (NSCLC) is one of the most common cancers in the UK

  • To address current challenges in the co-registration of computed tomography (CT) scans in the presence of radiation induced lung damage (RILD), in this work we have developed a deformable image registration (DIR) method that aims to enhance and utilise salient features that are mostly unchanged between time points in order to successfully register scans that are 12 months apart

  • We have demonstrated that our proposed method is suitable for aligning pre-RT and follow-up CTs from lung cancer RT patients exhibiting considerable anatomical changes due to RILD

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Summary

Introduction

Non-small cell lung cancer (NSCLC) is one of the most common cancers in the UK. The prognosis for lung cancer patients has been poor, but advancements in treatments have caused mortality to decline (Howlander et al 2020). Survivors of NSCLC can experience poor quality of life due to the toxicity of radiotherapy (RT) (Marks et al 2000, Lopez Guerra et al 2012, Fan et al 2001). The study of the negative long-term effects of radiation is becoming ever more important as patient survival rates increase. Radiation received during radiotherapy can lead to radiation induced lung damage (RILD). RILD is a time-dependent process, often split into two phases. Acute RILD or pneumonitis, is a phase of inflammation which occurs a few weeks or months after RT and is reversible

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