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- AcuteFront: Journal of Emergency Intelligence & Care
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- Digestive Intelligence & Therapeutic Innovation: Journal of Gastroenterology & Hepatology Sciences
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Articles
AI Prediction of the Physicochemical Structural Profile Required for Antitumor Drugs to Cross the Blood Brain Barrier
- Jean-Louis KRAUS*
Abstract Effectiveness of chemotherapy treatment for brain-related disorders is primarily limited by the difficulty these drugs have, in crossing the Blood-Brain Barrier (BBB). With the help of artificial intelligence, it is possible to predict the ability of a molecule or drug to cross the BBB, in silico. By initially predicting
Breast Cancer Diagnosis with Analog Artificial Neural Network: A Survey of Architectures, Implementations, and Challenges
- Koagne Longpa T. Silas1*, Djimeli-Tsajio Alain B1,2*, Fotsing Talla Bernard1,3, Lienou T. Jean- Pierre1,3 and Geh Wilson Ejuh4,5
Abstract The primary driver of female death remains breast cancer, highlighting the need for effective screening and accessible diagnostic tools. Digital hardware approaches have demonstrated strong performance but are constrained by high computational and energy demands, limiting their use in real-time portable devices. Analog Artificial Neural Networks (AANNs) offer advantages