Mammographically detected asymmetries in the era of artificial intelligence

被引:1
作者
Hanafy, Mennatallah Mohamed [1 ]
Ahmed, Aya Ahmed Hamed [2 ]
Ali, Engy Adel [1 ]
机构
[1] Cairo Univ, Fac Med, Dept Diagnost & Intervent Radiol, Cairo, Egypt
[2] Egyptian Minist Hlth & Populat, Cairo, Egypt
关键词
Breast asymmetry; Breast ultrasound; AI; DIGITAL MAMMOGRAPHY; BREAST; DIAGNOSIS;
D O I
10.1186/s43055-023-00979-1
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
BackgroundProper assessment of mammographically detected asymmetries is essential to avoid unnecessary biopsies and missed cancers as they may be of a benign or malignant cause. According to ACR BIRADS atlas 2013, mammographically detected asymmetries are classified into asymmetry, focal asymmetry, global asymmetry, and developing asymmetry. We aimed to assess the diagnostic performance of artificial intelligence in mammographically detected asymmetries compared to breast ultrasound as well as combined mammography and ultrasound.ResultsThis study was a prospective study that comprised 51 women with breast asymmetry found on screening as well as diagnostic mammography. All participants conducted full-field digital mammography and ultrasound. Then the obtained mammographic images were processed by the artificial intelligence software system. Mammography had a sensitivity of 100%, specificity of 73%, a positive predictive value of 56.52%, a negative predictive value of 100%, and diagnostic accuracy of 80%. The results of Ultrasound revealed a sensitivity of 100.00%, a specificity of 89.47%, a positive predictive value of 76.47%, a negative predictive value of 100.00%, and an accuracy of 92.16%. Combined mammography and breast ultrasound showed a sensitivity of 100.00%, a specificity of 86.84%, a positive predictive value of 72.22%, a negative predictive value of 100.00%, and an accuracy of 90.20%. Artificial intelligence results demonstrated a sensitivity of 84.62%, a specificity of 94.74%, a positive predictive value of 48.26%, a negative predictive value of 94.47%, and an accuracy of 92.16%.ConclusionsAdding breast ultrasound in the assessment of mammographically detected asymmetries led to better characterization, so it reduced the false-positive results and improved the specificity. Also, Artificial intelligence showed better specificity compared to mammography, breast ultrasound, and combined Mammography and ultrasound, so AI can be used to decrease unnecessary biopsies as it increases confidence in diagnosis, especially in cases with no definite ultrasound suspicious abnormality.
引用
收藏
页数:9
相关论文
共 50 条
[31]   New Era of Artificial Intelligence in Education: Towards a Sustainable Multifaceted Revolution [J].
Kamalov, Firuz ;
Calonge, David Santandreu ;
Gurrib, Ikhlaas .
SUSTAINABILITY, 2023, 15 (16)
[32]   Dermatopathology of Malignant Melanoma in the Era of Artificial Intelligence: A Single Institutional Experience [J].
Cazzato, Gerardo ;
Massaro, Alessandro ;
Colagrande, Anna ;
Lettini, Teresa ;
Cicco, Sebastiano ;
Parente, Paola ;
Nacchiero, Eleonora ;
Lospalluti, Lucia ;
Cascardi, Eliano ;
Giudice, Giuseppe ;
Ingravallo, Giuseppe ;
Resta, Leonardo ;
Maiorano, Eugenio ;
Vacca, Angelo .
DIAGNOSTICS, 2022, 12 (08)
[33]   Era of Generalist Conversational Artificial Intelligence to Support Public Health Communications [J].
Sezgin, Emre ;
Kocaballi, Ahmet Baki .
JOURNAL OF MEDICAL INTERNET RESEARCH, 2025, 27
[34]   Computerized application for epilepsy in China: Does the era of artificial intelligence comes? [J].
Gong, Yiwei ;
Xu, Cenglin ;
Wang, Shuang ;
Wang, Yi ;
Chen, Zhong .
ACTA NEUROLOGICA SCANDINAVICA, 2022, 146 (06) :732-742
[35]   Artificial intelligence and big data in entrepreneurship: a new era has begun [J].
Martin Obschonka ;
David B. Audretsch .
Small Business Economics, 2020, 55 :529-539
[36]   Audiological Diagnosis of Valvular and Congenital Heart Diseases in the Era of Artificial Intelligence [J].
Ainiwaer, Aikeliyaer ;
Kadier, Kaisaierjiang ;
Qin, Lian ;
Rehemuding, Rena ;
Ma, Xiang ;
Ma, Yi-Tong .
REVIEWS IN CARDIOVASCULAR MEDICINE, 2023, 24 (06)
[37]   The Prediction and Treatment of Bleeding Esophageal Varices in the Artificial Intelligence Era: A Review [J].
Pineda, Maria Isabel Murillo ;
Xiao, Tania Siu ;
Herrera, Edgar J. Sanabria ;
Aguilar, Alberto Ayala ;
Escamilla, David Arriaga ;
Reyes, Alejandra M. Aleman ;
Marron, Andreina D. Rojas ;
Lievano, Roberto R. Fabila ;
de Jesus Correa Gomez, Jessica J. ;
Ramirez, Marily Martinez .
CUREUS JOURNAL OF MEDICAL SCIENCE, 2024, 16 (03)
[38]   Ethical Aspects of the Impact of AI: the Status of Humans in the Era of Artificial Intelligence [J].
Roman Rakowski ;
Petr Polak ;
Petra Kowalikova .
Society, 2021, 58 :196-203
[39]   A Prospective Analysis of Screen-Detected Cancers Recalled and Not Recalled by Artificial Intelligence [J].
Smith, Samantha J. ;
Bradley, Sally Anne ;
Walker-Stabeler, Katie ;
Siafakas, Michael .
JOURNAL OF BREAST IMAGING, 2024, 6 (04) :378-387
[40]   MR imaging of mammographically detected clustered micro calcifications: Is there any value? [J].
Westerhof, JP ;
Fischer, U ;
Moritz, JD ;
Oestmann, JW .
RADIOLOGY, 1998, 207 (03) :675-681