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Development and validation of an infrared-artificial intelligence software for breast cancer detection.
Martín-Del-Campo-Mena, Enrique; Sánchez-Méndez, Pedro A; Ruvalcaba-Limon, Eva; Lazcano-Ramírez, Federico M; Hernández-Santiago, Andrés; Juárez-Aburto, Jorge A; Larios-Cruz, Kictzia Y; Hernández-Gómez, L Enrique; Merino-González, J Andrei; González-Mejía, Yessica.
Affiliation
  • Martín-Del-Campo-Mena E; Oncologic surgery, State Cancer Center: Miguel Dorantes Mesa, Aguascalientes 100, Progreso Macuiltepetl, Xalapa, Veracruz 91130, Mexico.
  • Sánchez-Méndez PA; Hearthcore SAPI de CV, Bosques de Tabasco 79, Bosques de México, Tlalnepantla, Mexico State 91130, Mexico.
  • Ruvalcaba-Limon E; Teaching and Research, Breast Cancer Foundation (FUCAM, A.C.), Av. Bordo 100, Viejo Ejido de Santa Úrsula Coapa, Coyoacán, Mexico City 04980, Mexico.
  • Lazcano-Ramírez FM; Epidemiological Surveillance and Preventive Medicine, General Hospital Dr. Fernando Quiroz Gutiérrez, ISSSTE, Felipe Ángeles y Canario s/n, Bellavista, Álvaro Obregón, Mexico City 01140, Mexico.
  • Hernández-Santiago A; Hearthcore SAPI de CV, Bosques de Tabasco 79, Bosques de México, Tlalnepantla, Mexico State 91130, Mexico.
  • Juárez-Aburto JA; Hearthcore SAPI de CV, Bosques de Tabasco 79, Bosques de México, Tlalnepantla, Mexico State 91130, Mexico.
  • Larios-Cruz KY; Radiology, Breast Cancer Foundation (FUCAM, A.C.), Av. Bordo 100, Viejo Ejido de Santa Úrsula Coapa, Coyoacán, Mexico City 04980, Mexico.
  • Hernández-Gómez LE; Hearthcore SAPI de CV, Bosques de Tabasco 79, Bosques de México, Tlalnepantla, Mexico State 91130, Mexico.
  • Merino-González JA; Hearthcore SAPI de CV, Bosques de Tabasco 79, Bosques de México, Tlalnepantla, Mexico State 91130, Mexico.
  • González-Mejía Y; Hearthcore SAPI de CV, Bosques de Tabasco 79, Bosques de México, Tlalnepantla, Mexico State 91130, Mexico.
Explor Target Antitumor Ther ; 4(2): 294-306, 2023.
Article in En | MEDLINE | ID: mdl-37206999
Aim: In countries where access to mammography equipment and skilled personnel is limited, most breast cancer (BC) cases are detected in locally advanced stages. Infrared breast thermography is recognized as an adjunctive technique for the detection of BC due to its advantages such as safety (by not emitting ionizing radiation nor applying any stress to the breast), portability, and low cost. Improved by advanced computational analytics techniques, infrared thermography could be a valuable complementary screening technique to detect BC at early stages. In this work, an infrared-artificial intelligence (AI) software was developed and evaluated to help physicians to identify potential BC cases. Methods: Several AI algorithms were developed and evaluated, which were learned from a proprietary database of 2,700 patients, with BC cases that were confirmed through mammography, ultrasound, and biopsy. Following by evaluation of the algorithms, the best AI algorithm (infrared-AI software) was submitted to a clinic validation process in which its ability to detect BC was compared to mammography evaluations in a double-blind test. Results: The infrared-AI software demonstrated efficiency values of 94.87% sensitivity, 72.26% specificity, 30.08% positive predictive value (PPV), and 99.12% negative predictive value (NPV), whereas the reference mammography evaluation reached 100% sensitivity, 97.10% specificity, 81.25% PPV, and 100% NPV. Conclusions: The infrared-AI software here developed shows high BC sensitivity (94.87%) and high NPV (99.12%). Therefore, it is proposed as a complementary screening tool for BC.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Clinical_trials / Diagnostic_studies Language: En Journal: Explor Target Antitumor Ther Year: 2023 Document type: Article Affiliation country: Mexico Country of publication: United States

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Clinical_trials / Diagnostic_studies Language: En Journal: Explor Target Antitumor Ther Year: 2023 Document type: Article Affiliation country: Mexico Country of publication: United States