Felix Jozsa, Rose Baker, Peter Kelly, Muneer Ahmed, Michael Douek
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The intersection of machine learning with medicine can provide innovative ways to understand specific risks within large patient data sets, but this has not yet been trialed in the arena of axillary node management in breast cancer.</p><p><strong>Objective: </strong>The objective of this study was to assess if machine learning techniques could be used to improve preoperative identification of patients with low and high axillary metastatic burden.</p><p><strong>Methods: </strong>A single-center retrospective analysis was performed on patients with breast cancer who had a preoperative AUS, and the specificity and sensitivity of AUS were calculated. Standard statistical methods and machine learning methods, including artificial neural network, naive Bayes, support vector machine, and random forest, were applied to the data to see if they could improve the accuracy of preoperative AUS to better discern high and low axillary burden.</p><p><strong>Results: </strong>The study included 459 patients; 142 (31%) had a positive AUS; among this group, 88 (62%) had 2 or fewer macrometastatic nodes at ANC. Logistic regression outperformed AUS (specificity 0.950 vs 0.809). Of all the methods, the artificial neural network had the highest accuracy (0.919). Interestingly, AUS had the highest sensitivity of all methods (0.777), underlining its utility in this setting.</p><p><strong>Conclusions: </strong>We demonstrated that machine learning improves identification of the important subgroup of patients with no palpable axillary disease, positive ultrasound, and more than 2 metastatically involved nodes. A negative ultrasound in patients with no palpable lymphadenopathy is highly indicative of low axillary burden, and it is unclear whether sentinel node biopsy adds value in this situation. Further studies with larger patient numbers focusing on specific breast cancer subgroups are required to refine these techniques in this setting.</p>","PeriodicalId":73557,"journal":{"name":"JMIR perioperative medicine","volume":" ","pages":"e34600"},"PeriodicalIF":0.0000,"publicationDate":"2022-11-15","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9709674/pdf/","citationCount":"0","resultStr":"{\"title\":\"The Use of Machine Learning to Reduce Overtreatment of the Axilla in Breast Cancer: Retrospective Cohort Study.\",\"authors\":\"Felix Jozsa, Rose Baker, Peter Kelly, Muneer Ahmed, Michael Douek\",\"doi\":\"10.2196/34600\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>Patients with early breast cancer undergoing primary surgery, who have low axillary nodal burden, can safely forego axillary node clearance (ANC). However, routine use of axillary ultrasound (AUS) leads to 43% of patients in this group having ANC unnecessarily, following a positive AUS. The intersection of machine learning with medicine can provide innovative ways to understand specific risks within large patient data sets, but this has not yet been trialed in the arena of axillary node management in breast cancer.</p><p><strong>Objective: </strong>The objective of this study was to assess if machine learning techniques could be used to improve preoperative identification of patients with low and high axillary metastatic burden.</p><p><strong>Methods: </strong>A single-center retrospective analysis was performed on patients with breast cancer who had a preoperative AUS, and the specificity and sensitivity of AUS were calculated. Standard statistical methods and machine learning methods, including artificial neural network, naive Bayes, support vector machine, and random forest, were applied to the data to see if they could improve the accuracy of preoperative AUS to better discern high and low axillary burden.</p><p><strong>Results: </strong>The study included 459 patients; 142 (31%) had a positive AUS; among this group, 88 (62%) had 2 or fewer macrometastatic nodes at ANC. Logistic regression outperformed AUS (specificity 0.950 vs 0.809). Of all the methods, the artificial neural network had the highest accuracy (0.919). Interestingly, AUS had the highest sensitivity of all methods (0.777), underlining its utility in this setting.</p><p><strong>Conclusions: </strong>We demonstrated that machine learning improves identification of the important subgroup of patients with no palpable axillary disease, positive ultrasound, and more than 2 metastatically involved nodes. A negative ultrasound in patients with no palpable lymphadenopathy is highly indicative of low axillary burden, and it is unclear whether sentinel node biopsy adds value in this situation. 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引用次数: 0
摘要
背景:接受初级手术的早期乳腺癌患者,如果腋窝淋巴结负担低,可以安全地放弃腋窝淋巴结清除率(ANC)。然而,常规使用腋窝超声(AUS)导致该组43%的患者在AUS阳性后出现不必要的ANC。机器学习与医学的交叉可以提供创新的方法来了解大型患者数据集中的特定风险,但这尚未在乳腺癌腋窝淋巴结管理领域进行试验。目的:本研究的目的是评估机器学习技术是否可以用于提高低腋窝转移负担和高腋窝转移负担患者的术前识别。方法:对术前行AUS的乳腺癌患者进行单中心回顾性分析,计算AUS的特异性和敏感性。对数据应用标准统计方法和机器学习方法,包括人工神经网络、朴素贝叶斯、支持向量机、随机森林等,观察是否能提高术前AUS的准确率,更好地辨别高低腋窝负荷。结果:纳入459例患者;142例(31%)AUS阳性;在这组患者中,88例(62%)ANC有2个或更少的大转移淋巴结。Logistic回归优于AUS(特异性0.950 vs 0.809)。在所有方法中,人工神经网络的准确率最高(0.919)。有趣的是,AUS在所有方法中具有最高的灵敏度(0.777),强调了它在这种情况下的实用性。结论:我们证明了机器学习提高了对无可触及腋窝疾病、超声阳性和超过2个转移性淋巴结的重要亚组患者的识别。无可触及淋巴结病变的患者超声阴性高度提示腋窝负荷低,目前尚不清楚前哨淋巴结活检在这种情况下是否有价值。在这种情况下,需要针对特定乳腺癌亚组进行更多患者数量的进一步研究来完善这些技术。
The Use of Machine Learning to Reduce Overtreatment of the Axilla in Breast Cancer: Retrospective Cohort Study.
Background: Patients with early breast cancer undergoing primary surgery, who have low axillary nodal burden, can safely forego axillary node clearance (ANC). However, routine use of axillary ultrasound (AUS) leads to 43% of patients in this group having ANC unnecessarily, following a positive AUS. The intersection of machine learning with medicine can provide innovative ways to understand specific risks within large patient data sets, but this has not yet been trialed in the arena of axillary node management in breast cancer.
Objective: The objective of this study was to assess if machine learning techniques could be used to improve preoperative identification of patients with low and high axillary metastatic burden.
Methods: A single-center retrospective analysis was performed on patients with breast cancer who had a preoperative AUS, and the specificity and sensitivity of AUS were calculated. Standard statistical methods and machine learning methods, including artificial neural network, naive Bayes, support vector machine, and random forest, were applied to the data to see if they could improve the accuracy of preoperative AUS to better discern high and low axillary burden.
Results: The study included 459 patients; 142 (31%) had a positive AUS; among this group, 88 (62%) had 2 or fewer macrometastatic nodes at ANC. Logistic regression outperformed AUS (specificity 0.950 vs 0.809). Of all the methods, the artificial neural network had the highest accuracy (0.919). Interestingly, AUS had the highest sensitivity of all methods (0.777), underlining its utility in this setting.
Conclusions: We demonstrated that machine learning improves identification of the important subgroup of patients with no palpable axillary disease, positive ultrasound, and more than 2 metastatically involved nodes. A negative ultrasound in patients with no palpable lymphadenopathy is highly indicative of low axillary burden, and it is unclear whether sentinel node biopsy adds value in this situation. Further studies with larger patient numbers focusing on specific breast cancer subgroups are required to refine these techniques in this setting.