Treatments for breast cancer have continued to evolve and improve in recent years, resulting in a substantial increase in survival rates, with approximately 80\% of patients having a 10-year survival period. Given the serious impact that breast cancer treatments can have on a patient's body image, consequently affecting her self-confidence and sexual and intimate relationships, it is paramount to ensure that women receive the treatment that optimizes both survival and aesthetic outcomes. Currently, there is no gold standard for evaluating the aesthetic outcome of breast cancer treatment. In addition, there is no standard way to show patients the potential outcome of surgery. The presentation of similar cases from the past would be extremely important to manage women's expectations of the possible outcome. In this work, we propose a deep neural network to perform the aesthetic evaluation. As a proof-of-concept, we focus on a binary aesthetic evaluation. Besides its use for classification, this deep neural network can also be used to find the most similar past cases by searching for nearest neighbours in the highly semantic space before classification. We performed the experiments on a dataset consisting of 143 photos of women after conservative treatment for breast cancer. The results for accuracy and balanced accuracy showed the superior performance of our proposed model compared to the state of the art in aesthetic evaluation of breast cancer treatments. In addition, the model showed a good ability to retrieve similar previous cases, with the retrieved cases having the same or adjacent class (in the 4-class setting) and having similar types of asymmetry. Finally, a qualitative interpretability assessment was also performed to analyse the robustness and trustworthiness of the model.
翻译:近年来,乳腺癌治疗继续演变并得到改善,导致存活率大幅上升,大约80-%的患者存活期达到10年左右。鉴于乳腺癌治疗对患者身体形象的严重影响,从而影响其自信以及性关系和亲密关系,当务之急是确保妇女得到最优化生存和审美结果的治疗。目前,在评价乳腺癌治疗的审美结果方面没有黄金标准。此外,没有标准的方法可以向病人展示手术的潜在结果。介绍过去类似病例对于管理妇女对可能结果的期望极为重要。在这项工作中,我们建议建立一个深层神经网络来进行审美评价,从而影响她的自信心以及性关系和亲密关系,因此,我们的重点是进行二进制美学评估。除了用于分类外,这一深层神经网络还可以用来通过在分类之前的高度语义空间寻找最接近的邻居来找到最相似的以往案例。我们进行了一个实验,在对乳腺癌进行保守性治疗之后,有143张女性的相像样照片的定性分析将极为重要。在这个实验中,我们还提出了进行类似性评估的准确性和平衡性评估。在类似癌症的准确性方面,最后显示我们进行了一种比较的癌症的准确性评估。在排序上的精确性评估。在癌症方面,最后显示一种比较的准确性方面,对癌症的正确性方面,在排序方面,在比较的正确性方面,在比较的正确性评估。