INESC TEC, Portugal; University of Porto, Portugal.
INESC TEC, Portugal; University of Porto, Portugal.
Breast. 2020 Feb;49:123-130. doi: 10.1016/j.breast.2019.11.006. Epub 2019 Nov 21.
The Breast Cancer overall survival rate has raised impressively in the last 20 years mainly due to improved screening and effectiveness of treatments. This increase in survival paralleled the awareness over the long-lasting impact of the side effects of treatments on patient quality of life, emphasizing the motto "a longer but better life for breast cancer patients". In breast cancer more strikingly than in other cancers, besides the side effects of systemic treatments, there is the visible impact of surgery and radiotherapy on patients' body image. This has sparked interest on the development of tools for the aesthetic evaluation of Breast Cancer locoregional treatments, which evolved from manual, subjective approaches to computerized, automated solutions. However, although studied for almost four decades, past solutions were not mature enough to become a standard. Recent advancements in machine learning have inspired trends toward deep-learning-based medical image analysis, also bringing new promises to the field of aesthetic assessment of locoregional treatments. In this paper, a review and discussion of the previous state-of-the-art methods in the field is conducted and the extracted knowledge is used to understand the evolution and current challenges. The aim of this paper is to delve into the current opportunities as well as motivate and guide future research in the aesthetic assessment of Breast Cancer locoregional treatments.
在过去的 20 年中,由于筛查水平的提高和治疗效果的改善,乳腺癌的整体存活率令人印象深刻地提高了。这种存活率的提高与人们对治疗副作用对患者生活质量的长期影响的认识是一致的,这强调了“乳腺癌患者有更长但更好的生活”这一口号。在乳腺癌中,与其他癌症相比,除了全身治疗的副作用外,手术和放疗对患者身体形象的可见影响更为明显。这激发了人们对开发用于评估乳腺癌局部区域治疗美容效果的工具的兴趣,这些工具从手动、主观的方法发展到了计算机化、自动化的解决方案。然而,尽管已经研究了近四十年,但过去的解决方案还不够成熟,无法成为标准。最近机器学习的进步激发了基于深度学习的医学图像分析的发展趋势,也为局部区域治疗的美容评估领域带来了新的希望。本文对该领域以前的最新方法进行了综述和讨论,并利用所提取的知识来了解其发展和当前的挑战。本文的目的是深入探讨当前的机会,并激励和指导未来乳腺癌局部区域治疗美容评估的研究。