Abstract

Lung cancer is the leading cause of cancer-related mortality for males and females. Radiation therapy (RT) is one of the primary treatment modalities for lung cancer. While delivering the prescribed dose to tumor targets, it is essential to spare the tissues near the targets—the so-called organs-at-risk (OARs). An optimal RT planning benefits from the accurate segmentation of the gross tumor volume and surrounding OARs. Manual segmentation is a time-consuming and tedious task for radiation oncologists. Therefore, it is crucial to develop automatic image segmentation to relieve radiation oncologists of the tedious contouring work. Currently, the atlas-based automatic segmentation technique is commonly used in clinical routines. However, this technique depends heavily on the similarity between the atlas and the image segmented. With significant advances made in computer vision, deep learning as a part of artificial intelligence attracts increasing attention in medical image automatic segmentation. In this article, we reviewed deep learning based automatic segmentation techniques related to lung cancer and compared them with the atlas-based automatic segmentation technique. At present, the auto-segmentation of OARs with relatively large volume such as lung and heart etc. outperforms the organs with small volume such as esophagus. The average Dice similarity coefficient (DSC) of lung, heart and liver are over 0.9, and the best DSC of spinal cord reaches 0.9. However, the DSC of esophagus ranges between 0.71 and 0.87 with a ragged performance. In terms of the gross tumor volume, the average DSC is below 0.8. Although deep learning based automatic segmentation techniques indicate significant superiority in many aspects compared to manual segmentation, various issues still need to be solved. We discussed the potential issues in deep learning based automatic segmentation including low contrast, dataset size, consensus guidelines, and network design. Clinical limitations and future research directions of deep learning based automatic segmentation were discussed as well.

Highlights

  • Cancer is becoming the leading cause of death and the most prominent obstacle to life expectancy increases in all countries

  • We reviewed deep learning based automatic segmentation techniques related to lung cancer and compared them with the atlas-based automatic segmentation technique

  • Deep learning based automatic segmentation techniques have rapidly become the state-of-the-art technique in delineating the OARs and gross tumor volume (GTV) in lung cancer radiation therapy (RT)

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Summary

Introduction

Cancer is becoming the leading cause of death and the most prominent obstacle to life expectancy increases in all countries. According to GLOBOCAN 2020, it is estimated that 19.3 million new cancer cases and 9.96 million cancer deaths occurred in 2020. Lung cancer, accounting for 11.4% of all new cases, is the second most common cancer. It ranks first among the cancer-related mortality worldwide, accounting for 18.0% of the total cancer death [1]. The success of RT depends on accurate irradiating the tumor targets while sparing the organs-at-risk (OARs) and avoiding RT-related complications. It is vital to segment the gross tumor volume (GTV) and OARs accurately in the RT treatment planning to deliver the prescription dose to the GTV

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