pharmacy
KokushiMD-10: Benchmark for Evaluating Large Language Models on Ten Japanese National Healthcare Licensing Examinations
Liu, Junyu, Yan, Kaiqi, Wang, Tianyang, Niu, Qian, Nagai-Tanima, Momoko, Aoyama, Tomoki
Recent advances in large language models (LLMs) have demonstrated notable performance in medical licensing exams. However, comprehensive evaluation of LLMs across various healthcare roles, particularly in high-stakes clinical scenarios, remains a challenge. Existing benchmarks are typically text-based, English-centric, and focus primarily on medicines, which limits their ability to assess broader healthcare knowledge and multimodal reasoning. To address these gaps, we introduce KokushiMD-10, the first multimodal benchmark constructed from ten Japanese national healthcare licensing exams. This benchmark spans multiple fields, including Medicine, Dentistry, Nursing, Pharmacy, and allied health professions. It contains over 11588 real exam questions, incorporating clinical images and expert-annotated rationales to evaluate both textual and visual reasoning. We benchmark over 30 state-of-the-art LLMs, including GPT-4o, Claude 3.5, and Gemini, across both text and image-based settings. Despite promising results, no model consistently meets passing thresholds across domains, highlighting the ongoing challenges in medical AI. KokushiMD-10 provides a comprehensive and linguistically grounded resource for evaluating and advancing reasoning-centric medical AI across multilingual and multimodal clinical tasks.
The Digital Transformation in Health: How AI Can Improve the Performance of Health Systems
Periáñez, África, del Río, Ana Fernández, Nazarov, Ivan, Jané, Enric, Hassan, Moiz, Rastogi, Aditya, Tang, Dexian
Mobile health has the potential to revolutionize health care delivery and patient engagement. In this work, we discuss how integrating Artificial Intelligence into digital health applications-focused on supply chain, patient management, and capacity building, among other use cases-can improve the health system and public health performance. We present an Artificial Intelligence and Reinforcement Learning platform that allows the delivery of adaptive interventions whose impact can be optimized through experimentation and real-time monitoring. The system can integrate multiple data sources and digital health applications. The flexibility of this platform to connect to various mobile health applications and digital devices and send personalized recommendations based on past data and predictions can significantly improve the impact of digital tools on health system outcomes. The potential for resource-poor settings, where the impact of this approach on health outcomes could be more decisive, is discussed specifically. This framework is, however, similarly applicable to improving efficiency in health systems where scarcity is not an issue.
- Africa > Kenya (0.04)
- North America > United States > Delaware > New Castle County > Newark (0.04)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)
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- Research Report > Experimental Study (1.00)
- Research Report > Strength High (0.93)
- Overview (0.93)
Mobility-based Traffic Forecasting in a Multimodal Transport System
Mboko, Henock M., Balde, Mouhamadou A. M. T., Ndiaye, Babacar M.
We study the analysis of all the movements of the population on the basis of their mobility from one node to another, to observe, measure, and predict the impact of traffic according to this mobility. The frequency of congestion on roads directly or indirectly impacts our economic or social welfare. Our work focuses on exploring some machine learning methods to predict (with a certain probability) traffic in a multimodal transportation network from population mobility data. We analyze the observation of the influence of people's movements on the transportation network and make a likely prediction of congestion on the network based on this observation (historical basis).
- Africa > Senegal > Dakar Region > Dakar (0.06)
- North America > Trinidad and Tobago > Trinidad > Arima > Arima (0.04)
- North America > United States > Michigan (0.04)
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- Transportation > Infrastructure & Services (1.00)
- Transportation > Ground (1.00)
Optimizing Drug Delivery in Smart Pharmacies: A Novel Framework of Multi-Stage Grasping Network Combined with Adaptive Robotics Mechanism
Tang, Rui, Guo, Shirong, Qiu, Yuhang, Chen, Honghui, Huang, Lujin, Yong, Ming, Zhou, Linfu, Guo, Liquan
Robots-based smart pharmacies are essential for modern healthcare systems, enabling efficient drug delivery. However, a critical challenge exists in the robotic handling of drugs with varying shapes and overlapping positions, which previous studies have not adequately addressed. To enhance the robotic arm's ability to grasp chaotic, overlapping, and variously shaped drugs, this paper proposed a novel framework combining a multi-stage grasping network with an adaptive robotics mechanism. The framework first preprocessed images using an improved Super-Resolution Convolutional Neural Network (SRCNN) algorithm, and then employed the proposed YOLOv5+E-A-SPPFCSPC+BIFPNC (YOLO-EASB) instance segmentation algorithm for precise drug segmentation. The most suitable drugs for grasping can be determined by assessing the completeness of the segmentation masks. Then, these segmented drugs were processed by our improved Adaptive Feature Fusion and Grasp-Aware Network (IAFFGA-Net) with the optimized loss function, which ensures accurate picking actions even in complex environments. To control the robot grasping, a time-optimal robotic arm trajectory planning algorithm that combines an improved ant colony algorithm with 3-5-3 interpolation was developed, further improving efficiency while ensuring smooth trajectories. Finally, this system was implemented and validated within an adaptive collaborative robot setup, which dynamically adjusts to different production environments and task requirements. Experimental results demonstrate the superiority of our multi-stage grasping network in optimizing smart pharmacy operations, while also showcasing its remarkable adaptability and effectiveness in practical applications.
- Asia > China > Fujian Province > Fuzhou (0.04)
- Asia > China > Jiangsu Province > Nanjing (0.04)
- Oceania > Australia (0.04)
- Information Technology > Artificial Intelligence > Robots (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Evolutionary Systems (1.00)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Optimization (0.93)
Adaptive Behavioral AI: Reinforcement Learning to Enhance Pharmacy Services
del Río, Ana Fernández, Leong, Michael Brennan, Saraiva, Paulo, Nazarov, Ivan, Rastogi, Aditya, Hassan, Moiz, Tang, Dexian, Periáñez, África
Pharmacies are critical in healthcare systems, particularly in low- and middle-income countries. Procuring pharmacists with the right behavioral interventions or nudges can enhance their skills, public health awareness, and pharmacy inventory management, ensuring access to essential medicines that ultimately benefit their patients. We introduce a reinforcement learning operational system to deliver personalized behavioral interventions through mobile health applications. We illustrate its potential by discussing a series of initial experiments run with SwipeRx, an all-in-one app for pharmacists, including B2B e-commerce, in Indonesia. The proposed method has broader applications extending beyond pharmacy operations to optimize healthcare delivery.
- Europe > Spain > Catalonia > Barcelona Province > Barcelona (0.07)
- Africa (0.06)
- North America > United States > New York > New York County > New York City (0.05)
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Classifying spam emails using agglomerative hierarchical clustering and a topic-based approach
Janez-Martino, F., Alaiz-Rodriguez, R., Gonzalez-Castro, V., Fidalgo, E., Alegre, E.
Spam emails are unsolicited, annoying and sometimes harmful messages which may contain malware, phishing or hoaxes. Unlike most studies that address the design of efficient anti-spam filters, we approach the spam email problem from a different and novel perspective. Focusing on the needs of cybersecurity units, we follow a topic-based approach for addressing the classification of spam email into multiple categories. We propose SPEMC-15K-E and SPEMC-15K-S, two novel datasets with approximately 15K emails each in English and Spanish, respectively, and we label them using agglomerative hierarchical clustering into 11 classes. We evaluate 16 pipelines, combining four text representation techniques -Term Frequency-Inverse Document Frequency (TF-IDF), Bag of Words, Word2Vec and BERT- and four classifiers: Support Vector Machine, N\"aive Bayes, Random Forest and Logistic Regression. Experimental results show that the highest performance is achieved with TF-IDF and LR for the English dataset, with a F1 score of 0.953 and an accuracy of 94.6%, and while for the Spanish dataset, TF-IDF with NB yields a F1 score of 0.945 and 98.5% accuracy. Regarding the processing time, TF-IDF with LR leads to the fastest classification, processing an English and Spanish spam email in and on average, respectively.
- Europe > Spain > Castile and León > León Province > León (0.04)
- North America > United States > California > Santa Clara County > Mountain View (0.04)
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- Law Enforcement & Public Safety > Crime Prevention & Enforcement (1.00)
- Information Technology > Security & Privacy (1.00)
- Government > Military > Cyberwarfare (0.35)
Artificial intelligence will make your new drugs and help you get them
Fox News contributor Dr. Marc Siegel weighs in on how artificial intelligence can change the patient-doctor relationship on'America's Newsroom.' Artificial Intelligence has an exciting future in health care, from streamlining insurance claims, to aiding radiologists, dermatologists, cardiologists and other specialties by enhancing data-based pattern recognition, from providing rapid information and improving efficiency in hospitals to a direct role in the doctor's office in informing both doctors and patients. Don't get me wrong, I have great respect for clinical judgment, creative solutions, and the need to preserve patient privacy. My personal empathy cannot be replaced by a computer voice, no matter how soothing it is. And so AI must work as a kind of co-pilot in the doctor's office.
Herb-Drug Interactions: A Holistic Decision Support System in Healthcare
Martins, Andreia, Maia, Eva, Praça, Isabel
Complementary and alternative medicine are commonly used concomitantly with conventional medications leading to adverse drug reactions and even fatality in some cases. Furthermore, the vast possibility of herb-drug interactions prevents health professionals from remembering or manually searching them in a database. Decision support systems are a powerful tool that can be used to assist clinicians in making diagnostic and therapeutic decisions in patient care. Therefore, an original and hybrid decision support system was designed to identify herb-drug interactions, applying artificial intelligence techniques to identify new possible interactions. Different machine learning models will be used to strengthen the typical rules engine used in these cases. Thus, using the proposed system, the pharmacy community, people's first line of contact within the Healthcare System, will be able to make better and more accurate therapeutic decisions and mitigate possible adverse events.
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- Europe > Portugal > Porto > Porto (0.05)
- Oceania > Australia (0.04)
- Asia > Middle East > Jordan (0.04)
Your Data Architecture Holds the Key to Unlocking AI's Full Potential
In the words of J.R.R. Tolkien, "shortcuts make long delays." I get it, we live in an age of instant gratification, with Doordash and Grubhub meals on-demand, fast-paced social media and same-day Amazon Prime deliveries. But I've learned that in some cases, shortcuts are just not possible. Such is the case with comprehensive AI implementations; you cannot shortcut success. Operationalizing AI at scale mandates that your full suite of data–structured, unstructured and semi-structured get organized and architected in a way that makes it useable, readily accessible and secure.
How Machine Learning is Changing Prescription Delivery
As the healthcare industry continues to evolve, pharmacists play an essential role in delivering patient care. With the increasing demand for pharmaceutical services, pharmacists are looking for ways to improve efficiency while maintaining the highest levels of patient safety. Machine learning is an emerging technology that can help pharmacists deliver prescriptions more effectively and efficiently. In this article, we will explore how machine learning can revolutionize the pharmacy industry. Machine learning is a branch of artificial intelligence that involves developing algorithms that can learn from data and make predictions or decisions based on that data.