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Prediction of Atypical Ductal Hyperplasia Upgrades Through a Machine Learning Approach to Reduce Unnecessary Surgical Excisions

机译:通过机器学习方法来减少非典型性导管增生的预测以减少不必要的手术切除

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摘要

Surgical excision is currently recommended for all occurrences of atypical ductal hyperplasia (ADH) found on core needle biopsies for malignancy diagnoses and treatment of lesions. The excision of all ADH lesions may lead to overtreatment, which results in invasive surgeries for benign lesions in many women. A machine learning method to predict ADH upgrade may help clinicians and patients decide whether combined active surveillance and hormonal therapy is a reasonable alternative to surgical excision.
机译:目前建议对所有在芯针活检中发现的非典型导管增生(ADH)进行手术切除,以进行恶性肿瘤诊断和治疗。切除所有ADH病变可能会导致过度治疗,从而导致许多女性进行良性病变的侵入性手术。预测ADH升级的机器学习方法可以帮助临床医生和患者确定主动监测和激素治疗相结合是否是手术切除的合理替代方案。

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