结合放射MRI模型评估接受新辅助全身治疗的早期乳腺癌患者的术前反应:来自乳腺肿瘤学家和放射学家的合作见解。

IF 5.5 2区 医学 Q1 HEMATOLOGY
Mariangela Gaudio , Giulia Vatteroni , Rita De Sanctis , Riccardo Gerosa , Chiara Benvenuti , Jacopo Canzian , Flavia Jacobs , Giuseppe Saltalamacchia , Gianpiero Rizzo , Paolo Pedrazzoli , Armando Santoro , Daniela Bernardi , Alberto Zambelli
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引用次数: 0

摘要

评估新辅助治疗的反应对于乳腺癌患者选择最合适的治疗方案以减少侵入性局部治疗的需要至关重要。乳房磁共振成像(MRI)是迄今为止评估病理完全缓解最准确的方法之一,尽管它受到放射科医生评估的定性和主观性的限制,常常使其不足以决定是否放弃额外的局部治疗措施。为了在机器学习模型和深度学习方法的帮助下提高放射MRI的准确性和预测,作为人工智能的一部分,已被用于分析乳腺癌的不同亚型以及治疗前后观察到的具体变化。本文综述了放射MRI模型在早期乳腺癌患者术前反应评估中的最新进展,并重点讨论了其对临床实践的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incorporating radiomic MRI models for presurgical response assessment in patients with early breast cancer undergoing neoadjuvant systemic therapy: Collaborative insights from breast oncologists and radiologists
The assessment of neoadjuvant treatment’s response is critical for selecting the most suitable therapeutic options for patients with breast cancer to reduce the need for invasive local therapies. Breast magnetic resonance imaging (MRI) is so far one of the most accurate approaches for assessing pathological complete response, although this is limited by the qualitative and subjective nature of radiologists' assessment, often making it insufficient for deciding whether to forgo additional locoregional therapy measures. To increase the accuracy and prediction of radiomic MRI with the aid of machine learning models and deep learning methods, as part of artificial intelligence, have been used to analyse the different subtypes of breast cancer and the specific changes observed before and after therapy. This review discusses recent advancements in radiomic MRI models for presurgical response assessment for patients with early breast cancer receiving preoperative treatments, with a focus on their implications for clinical practice.
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来源期刊
CiteScore
11.00
自引率
3.20%
发文量
213
审稿时长
55 days
期刊介绍: Critical Reviews in Oncology/Hematology publishes scholarly, critical reviews in all fields of oncology and hematology written by experts from around the world. Critical Reviews in Oncology/Hematology is the Official Journal of the European School of Oncology (ESO) and the International Society of Liquid Biopsy.
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