Predicting Pathogenic Variants of Breast Cancer Using Ultrasound-Derived Machine Learning Models

被引:1
作者
Antone, Nicoleta Zenovia [1 ,2 ]
Pintican, Roxana [3 ,4 ]
Manole, Simona [4 ,5 ]
Fodor, Liviu-Andrei [6 ,7 ]
Lucaciu, Carina [3 ]
Roman, Andrei [3 ,4 ]
Trifa, Adrian [2 ,8 ,9 ]
Catana, Andreea [2 ,10 ]
Lisencu, Carmen [2 ]
Buiga, Rares [11 ]
Vlad, Catalin [1 ,12 ]
Achimas Cadariu, Patriciu [1 ,2 ,12 ]
机构
[1] Iuliu Hatieganu Univ Med & Pharm, Dept Maxillofacial Surg & Implantol, Cluj Napoca 400347, Romania
[2] Prof Dr Ion Chiricuta Inst Oncol, Surg Oncol Dept, Cluj Napoca, Romania
[3] Prof Dr Ion Chiricuta Oncol Inst, Dept Surg & Gynecol Oncol, Cluj Napoca, Romania
[4] Iuliu Hatieganu Univ Med & Pharm, Dept Histol, Cluj Napoca 400012, Romania
[5] Niculae Stancioiu Heart Inst, Dept Radiol, Cluj Napoca 400001, Romania
[6] Babes Bolyai Univ, Int Inst Adv Studies Psychotherapy & Appl Mental, Cluj Napoca, Romania
[7] Babes Bolyai Univ, Dept Clin Psychol & Psychotherapy, Cluj Napoca 400015, Romania
[8] Victor Babes Univ Med & Pharm, Ctr Res & Innovat Personalized Med Resp Dis, Discipline Med Genet, Timisoara 300041, Romania
[9] Clin Hosp Infect Dis & Pneumophysiol Dr Victor Bab, Ctr Expertise Rare Pulm Dis, Timisoara 300226, Romania
[10] Iuliu Hatieganu Univ Med & Pharm, Dept Histol, Cluj Napoca 400012, Romania
[11] Prof Dr Ion Chiricuta Oncol Inst, Dept Pathol, Cluj Napoca 400015, Romania
[12] Prof Dr Ion Chiricuta Oncol Inst, Dept Surg Oncol, Cluj Napoca 400015, Romania
关键词
breast cancer; major penetrance gene; pathogenic/likely pathogenic variant; radiomics; machine learning; BRCA; GENES;
D O I
10.3390/cancers17061019
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Background: Breast cancer (BC) is the most frequently diagnosed cancer in women and the leading cause of cancer-related deaths in women globally. Carriers of P/LP variants in the BRCA1, BRCA2, TP53, PTEN, CDH1, PALB2, and STK11 genes have an increased risk of developing BC, which is why more and more guidelines recommend prophylactic mastectomy in this group of patients. Because traditional genetic testing is expensive and can cause delays in patient management, radiomics based on diagnostic imaging could be an alternative. This study aims to evaluate whether ultrasound-based radiomics features can predict P/LP variant status in BC patients. Methods: This retrospective study included 88 breast tumors in patients tested with multigene panel tests, including all seven above-mentioned genes. Ultrasound images were acquired prior to any treatment, and the tumoral and peritumoral areas were used to extract radiomics data. The study population was divided into P/LP and non-P/LP variant groups. Radiomics features were analyzed using machine learning models, alone or in combination with clinical features, with the aim of predicting the genetic status of BC patients. Results: We observed significant differences in radiomics features between P/LP- and non-P/LP-variant-driven tumors. The developed radiomics model achieved a maximum mean accuracy of 85.7% in identifying P/LP variant carriers. Including features from the peritumoral area yielded the same maximum accuracy. Conclusions: Radiomics models based on ultrasound images of breast tumors may provide a promising alternative for predicting P/LP variant status in BC patients. This approach could reduce dependence on costly genetic testing and expedite the diagnostic process. However, further validation in larger and more diverse populations is needed.
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页数:14
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