Under-representation for Female Pelvis Cancers in Commercial Auto-segmentation Solutions and Open-source Imaging Datasets.

IF 3.2 3区 医学 Q2 ONCOLOGY Clinical oncology Pub Date : 2025-01-11 DOI:10.1016/j.clon.2024.10.003
M Thor, V Williams, C Hajj, L Cervino, H Veeraraghavan, S Elguindi, N Tyagi, A Shukla-Dave, J M Moran
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Abstract

Aim: Artificial intelligence (AI) based auto-segmentation aids radiation therapy (RT) workflows and is being adopted in clinical environments facilitated by the increased availability of commercial solutions for organs at risk (OARs). In addition, open-source imaging datasets support training for new auto-segmentation algorithms. Here, we studied if the female and male anatomies are equally represented among these solutions.

Materials and methods: Inquiries were sent to eight vendors regarding their clinically available OAR auto-segmentation solutions for each gender. The Cancer Imaging Archive (TCIA) was also screened for publicly available imaging datasets specific to the female and the male anatomy.

Results: All vendors provided AI based auto-segmentation solutions for the male pelvis and female breasts, while 5/8 vendors provided solutions for the female pelvis. The female breast and the female pelvis solutions were released at a median of 0.6 years and 2.3 years, respectively, after the release of the male pelvis solutions. Among 27 TCIA datasets identified, 15 involved the female anatomy (breast: 10; pelvis: 5) and 12 involved the male pelvis but no female-specific dataset included OAR segmentations, while three male pelvis datasets included OARs (ejaculatory duct, neurovascular bundle, penile bulb and verumontanum).

Conclusion: Commercial AI auto-segmentation solutions and open-source imaging datasets include considerably more solutions and OAR segmentations for male cancer over female cancer sites. This gender disparity is likely to propagate throughout the RT pipeline.

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商业自动分割解决方案和开源成像数据集中女性骨盆癌的代表性不足。
目的:基于人工智能(AI)的自动分割辅助放射治疗(RT)工作流程,并且由于风险器官(OARs)商业解决方案的可用性增加,正在临床环境中采用。此外,开源图像数据集支持新的自动分割算法的训练。在这里,我们研究了女性和男性的解剖结构是否在这些解决方案中是平等的。材料和方法:向8家供应商发送关于其临床可用的针对每个性别的OAR自动分割解决方案的询问。癌症影像档案(TCIA)也筛选了针对女性和男性解剖结构的公开可用的影像数据集。结果:所有供应商都提供了基于人工智能的男性骨盆和女性乳房自动分割解决方案,5/8供应商提供了女性骨盆的解决方案。女性乳房和女性骨盆分别在男性骨盆释放后的中位数0.6年和2.3年释放。在鉴定的27个TCIA数据集中,15个涉及女性解剖(乳房:10;骨盆:5)和12涉及男性骨盆,但没有女性特异性数据集包括桨叶分割,而3个男性骨盆数据集包括桨叶(射精管、神经血管束、阴茎球和睾丸)。结论:商业人工智能自动分割解决方案和开源成像数据集包含的男性癌症的解决方案和OAR分割比女性癌症部位多得多。这种性别差异可能会在整个RT管道中蔓延。
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来源期刊
Clinical oncology
Clinical oncology 医学-肿瘤学
CiteScore
5.20
自引率
8.80%
发文量
332
审稿时长
40 days
期刊介绍: Clinical Oncology is an International cancer journal covering all aspects of the clinical management of cancer patients, reflecting a multidisciplinary approach to therapy. Papers, editorials and reviews are published on all types of malignant disease embracing, pathology, diagnosis and treatment, including radiotherapy, chemotherapy, surgery, combined modality treatment and palliative care. Research and review papers covering epidemiology, radiobiology, radiation physics, tumour biology, and immunology are also published, together with letters to the editor, case reports and book reviews.
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