San Ramon
SynthFM: Training Modality-agnostic Foundation Models for Medical Image Segmentation without Real Medical Data
Sengupta, Sourya, Chakrabarty, Satrajit, Ravi, Keerthi Sravan, Avinash, Gopal, Soni, Ravi
SYNTHFM: TRAINING MODALITY -AGNOSTIC FOUNDA TION MODELS FOR MEDICAL IMAGE SEGMENT A TION WITHOUT REAL MEDICAL DA T A Sourya Sengupta 1, 2, Satrajit Chakrabarty 1, Keerthi Sravan Ravi 1, Gopal Avinash 1, Ravi Soni 1 1 GE HealthCare, San Ramon, CA, USA 2 University of Illinois Urbana-Champaign, Urbana, IL, USA ABSTRACT Foundation models like the Segment Anything Model (SAM) excel in zero-shot segmentation for natural images but struggle with medical image segmentation due to differences in texture, contrast, and noise. Annotating medical images is costly and requires domain expertise, limiting large-scale annotated data availability. To address this, we propose Syn-thFM, a synthetic data generation framework that mimics the complexities of medical images, enabling foundation models to adapt without real medical data. Using SAM's pretrained encoder and training the decoder from scratch on SynthFM's dataset, we evaluated our method on 11 anatomical structures across 9 datasets (CT, MRI, and Ultrasound). SynthFM outperformed zero-shot baselines like SAM and MedSAM, achieving superior results under different prompt settings and on out-of-distribution datasets.
- North America > United States > Illinois > Champaign County > Urbana (0.54)
- North America > United States > California > Contra Costa County > San Ramon (0.24)
SAMRI-2: A Memory-based Model for Cartilage and Meniscus Segmentation in 3D MRIs of the Knee Joint
Ferreira, Danielle L., Nunes, Bruno A. A., Zhang, Xuzhe, Gomez, Laura Carretero, Fung, Maggie, Soni, Ravi
Accurate morphometric assessment of cartilage-such as thickness/volume-via MRI is essential for monitoring knee osteoarthritis. Segmenting cartilage remains challenging and dependent on extensive expert-annotated datasets, which are heavily subjected to inter-reader variability. Recent advancements in Visual Foundational Models (VFM), especially memory-based approaches, offer opportunities for improving generalizability and robustness. This study introduces a deep learning (DL) method for cartilage and meniscus segmentation from 3D MRIs using interactive, memory-based VFMs. To improve spatial awareness and convergence, we incorporated a Hybrid Shuffling Strategy (HSS) during training and applied a segmentation mask propagation technique to enhance annotation efficiency. We trained four AI models-a CNN-based 3D-VNet, two automatic transformer-based models (SaMRI2D and SaMRI3D), and a transformer-based promptable memory-based VFM (SAMRI-2)-on 3D knee MRIs from 270 patients using public and internal datasets and evaluated on 57 external cases, including multi-radiologist annotations and different data acquisitions. Model performance was assessed against reference standards using Dice Score (DSC) and Intersection over Union (IoU), with additional morphometric evaluations to further quantify segmentation accuracy. SAMRI-2 model, trained with HSS, outperformed all other models, achieving an average DSC improvement of 5 points, with a peak improvement of 12 points for tibial cartilage. It also demonstrated the lowest cartilage thickness errors, reducing discrepancies by up to threefold. Notably, SAMRI-2 maintained high performance with as few as three user clicks per volume, reducing annotation effort while ensuring anatomical precision. This memory-based VFM with spatial awareness offers a novel approach for reliable AI-assisted knee MRI segmentation, advancing DL in musculoskeletal imaging.
- North America > United States > California > Contra Costa County > San Ramon (0.14)
- North America > United States > New York (0.04)
- North America > United States > Wisconsin > Waukesha County > Waukesha (0.04)
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- Research Report > New Finding (1.00)
- Research Report > Experimental Study (1.00)
- Health & Medicine > Therapeutic Area (1.00)
- Health & Medicine > Diagnostic Medicine > Imaging (1.00)
Towards better social crisis data with HERMES: Hybrid sensing for EmeRgency ManagEment System
Avvenuti, Marco, Bellomo, Salvatore, Cresci, Stefano, Nizzoli, Leonardo, Tesconi, Maurizio
People involved in mass emergencies increasingly publish information-rich contents in online social networks (OSNs), thus acting as a distributed and resilient network of human sensors. In this work we present HERMES, a system designed to enrich the information spontaneously disclosed by OSN users in the aftermath of disasters. HERMES leverages a mixed data collection strategy, called hybrid sensing, and state-of-the-art AI techniques. Evaluated in real-world emergencies, HERMES proved to increase: (i) the amount of the available damage information; (ii) the density (up to 7x) and the variety (up to 18x) of the retrieved geographic information; (iii) the geographic coverage (up to 30%) and granularity.
- Asia > Nepal (0.05)
- Asia > Philippines (0.04)
- Asia > India (0.04)
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- Information Technology > Security & Privacy (1.00)
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- Health & Medicine (0.93)
A quantum inspired predictor of Parkinsons disease built on a diverse, multimodal dataset
Vatsavai, Diya, Iyer, Anya, Nair, Ashwin A.
Parkinsons disease, the fastest growing neurodegenerative disorder globally, has seen a 50 percent increase in cases within just two years. As speech, memory, and motor symptoms worsen over time, early diagnosis is crucial for preserving patients quality of life. While machine-learning-based detection has shown promise, relying on a single feature for classification can be error-prone due to the variability of symptoms between patients. To address this limitation we utilized the mPower database, which includes 150,000 samples across four key biomarkers: voice, gait, tapping, and demographic data. From these measurements, we extracted 64 features and trained a baseline Random Forest model to select the features above the 80th percentile. For classification, we designed a simulatable quantum support vector machine (qSVM) that detects high-dimensional patterns, leveraging recent advancements in quantum machine learning. With a novel, simulatable architecture that can be run on standard hardware rather than resource-intensive quantum computers, our model achieves an accuracy of 90 percent and an AUC of 0.98, surpassing benchmark models. By utilizing an innovative classification framework built on a diverse set of features, our model offers a pathway for accessible global Parkinsons screening.
- Europe > Switzerland > Basel-City > Basel (0.05)
- North America > United States > Missouri (0.04)
- North America > United States > California > Yolo County > Davis (0.04)
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- Research Report > New Finding (0.93)
- Research Report > Experimental Study (0.93)
- Health & Medicine > Therapeutic Area > Neurology > Parkinson's Disease (1.00)
- Health & Medicine > Therapeutic Area > Musculoskeletal (1.00)
LoRa Communication for Agriculture 4.0: Opportunities, Challenges, and Future Directions
Aldhaheri, Lameya, Alshehhi, Noor, Manzil, Irfana Ilyas Jameela, Khalil, Ruhul Amin, Javaid, Shumaila, Saeed, Nasir, Alouini, Mohamed-Slim
The emerging field of smart agriculture leverages the Internet of Things (IoT) to revolutionize farming practices. This paper investigates the transformative potential of Long Range (LoRa) technology as a key enabler of long-range wireless communication for agricultural IoT systems. By reviewing existing literature, we identify a gap in research specifically focused on LoRa's prospects and challenges from a communication perspective in smart agriculture. We delve into the details of LoRa-based agricultural networks, covering network architecture design, Physical Layer (PHY) considerations tailored to the agricultural environment, and channel modeling techniques that account for soil characteristics. The paper further explores relaying and routing mechanisms that address the challenges of extending network coverage and optimizing data transmission in vast agricultural landscapes. Transitioning to practical aspects, we discuss sensor deployment strategies and energy management techniques, offering insights for real-world deployments. A comparative analysis of LoRa with other wireless communication technologies employed in agricultural IoT applications highlights its strengths and weaknesses in this context. Furthermore, the paper outlines several future research directions to leverage the potential of LoRa-based agriculture 4.0. These include advancements in channel modeling for diverse farming environments, novel relay routing algorithms, integrating emerging sensor technologies like hyper-spectral imaging and drone-based sensing, on-device Artificial Intelligence (AI) models, and sustainable solutions. This survey can guide researchers, technologists, and practitioners to understand, implement, and propel smart agriculture initiatives using LoRa technology.
- Europe > Romania (0.04)
- Asia > Middle East > Iraq > Muthanna Governorate (0.04)
- North America > United States > California > Contra Costa County > San Ramon (0.04)
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- Research Report > Promising Solution (0.45)
- Overview > Innovation (0.45)
Semi-Crowdsourced Clustering: Generalizing Crowd Labeling by Robust Distance Metric Learning, Anil K. Jain
One of the main challenges in data clustering is to define an appropriate similarity measure between two objects. Crowdclustering addresses this challenge by defining the pairwise similarity based on the manual annotations obtained through crowdsourcing. Despite its encouraging results, a key limitation of crowdclustering is that it can only cluster objects when their manual annotations are available. To address this limitation, we propose a new approach for clustering, called semi-crowdsourced clustering that effectively combines the low-level features of objects with the manual annotations of a subset of the objects obtained via crowdsourcing. The key idea is to learn an appropriate similarity measure, based on the low-level features of objects and from the manual annotations of only a small portion of the data to be clustered. One difficulty in learning the pairwise similarity measure is that there is a significant amount of noise and inter-worker variations in the manual annotations obtained via crowdsourcing. We address this difficulty by developing a metric learning algorithm based on the matrix completion method. Our empirical study with two real-world image data sets shows that the proposed algorithm outperforms state-of-the-art distance metric learning algorithms in both clustering accuracy and computational efficiency.
- North America > United States > Michigan > Ingham County > Lansing (0.04)
- North America > United States > Michigan > Ingham County > East Lansing (0.04)
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.04)
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Nyström Method vs Random Fourier Features: A Theoretical and Empirical Comparison
Both random Fourier features and the Nyström method have been successfully applied to efficient kernel learning. In this work, we investigate the fundamental difference between these two approaches, and how the difference could affect their generalization performances. Unlike approaches based on random Fourier features where the basis functions (i.e., cosine and sine functions) are sampled from a distribution independent from the training data, basis functions used by the Nyström method are randomly sampled from the training examples and are therefore data dependent. By exploring this difference, we show that when there is a large gap in the eigen-spectrum of the kernel matrix, approaches based on the Nyström method can yield impressively better generalization error bound than random Fourier features based approach. We empirically verify our theoretical findings on a wide range of large data sets.
- Asia > Middle East > Jordan (0.04)
- North America > United States > Michigan > Ingham County > Lansing (0.04)
- North America > United States > Michigan > Ingham County > East Lansing (0.04)
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Multi-FLEX: An Automatic Task Sequence Execution Framework to Enable Reactive Motion Planning for Multi-Robot Applications
Misra, Gaurav, Suzumura, Akihiro, Campo, Andres Rodriguez, Chenna, Kautilya, Bailey, Sean, Drinkard, John
In this letter, an integrated task planning and reactive motion planning framework termed Multi-FLEX is presented that targets real-world, industrial multi-robot applications. Reactive motion planning has been attractive for the purposes of collision avoidance, particularly when there are sources of uncertainty and variation. Most industrial applications, though, typically require parts of motion to be at least partially non-reactive in order to achieve functional objectives. Multi-FLEX resolves this dissonance and enables such applications to take advantage of reactive motion planning. The Multi-FLEX framework achieves 1) coordination of motion requests to resolve task-level conflicts and overlaps, 2) incorporation of application-specific task constraints into online motion planning using the new concepts of task dependency accommodation, task decomposition, and task bundling, and 3) online generation of robot trajectories using a custom, online reactive motion planner. This planner combines fast-to-create, sparse dynamic roadmaps (to find a complete path to the goal) with fast-to-execute, short-horizon, online, optimization-based local planning (for collision avoidance and high performance). To demonstrate, we use two six-degree-of-freedom, high-speed industrial robots in a deburring application to show the ability of this approach to not just handle collision avoidance and task variations, but to also achieve industrial applications.
- North America > United States > California > San Francisco County > San Francisco (0.14)
- Asia > Japan > Honshū > Kantō > Tokyo Metropolis Prefecture > Tokyo (0.14)
- North America > United States > California > Contra Costa County > San Ramon (0.04)
Deep learning-based instance segmentation for the precise automated quantification of digital breast cancer immunohistochemistry images
Priego-Torresa, Blanca Maria, Lobato-Delgado, Barbara, Atienza-Cuevas, Lidia, Sanchez-Morillo, Daniel
The quantification of biomarkers on immunohistochemistry breast cancer images is essential for defining appropriate therapy for breast cancer patients, as well as for extracting relevant information on disease prognosis. This is an arduous and time-consuming task that may introduce a bias in the results due to intra- and inter-observer variability which could be alleviated by making use of automatic quantification tools. However, this is not a simple processing task given the heterogeneity of breast tumors that results in non-uniformly distributed tumor cells exhibiting different staining colors and intensity, size, shape, and texture, of the nucleus, cytoplasm and membrane. In this research work, we demonstrate the feasibility of using a deep learning-based instance segmentation architecture for the automatic quantification of both nuclear and membrane biomarkers applied to IHC-stained slides. We have solved the cumbersome task of training set generation with the design and implementation of a web platform, which has served as a hub for communication and feedback between researchers and pathologists as well as a system for the validation of the automatic image processing models. Through this tool, we have collected annotations over samples of HE, ER and Ki-67 (nuclear biomarkers) and HER2 (membrane biomarker) IHC-stained images. Using the same deep learning network architecture, we have trained two models, so-called nuclei- and membrane-aware segmentation models, which, once successfully validated, have revealed to be a promising method to segment nuclei instances in IHC-stained images. The quantification method proposed in this work has been integrated into the developed web platform and is currently being used as a decision-support tool by pathologists.
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.04)
- North America > United States > Illinois > DuPage County > Lombard (0.04)
- North America > United States > Connecticut > New Haven County > New Haven (0.04)
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Ballooning AI-driven facial recognition industry sparks concern over bias, privacy: 'You are being identified'
AI strategist Lisa Palmer and privacy consultant Jodi Daniels discuss privacy concerns around the acquisition of biometric data. A significant expansion in Artificial intelligence (AI) facial recognition technology is increasingly being deployed to catch criminals, but experts express concern about the impact on personal privacy and data. According to the Allied Market Research data firm, the facial recognition industry, which was valued at $3.8 billion in 2020, will have grown to $16.7 billion by 2030. Lisa Palmer, an AI strategist, said it is important to understand that an individual's data largely feeds what happens from an AI perspective, especially within a generative framework. While there has been data recorded on citizens for decades, today's surveillance is different because of the quantity and quality of the data recorded as well as how it's being used, according to Palmer.
- Oceania > Australia (0.04)
- North America > United States > Oregon > Multnomah County > Portland (0.04)
- North America > United States > Oklahoma (0.04)
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- Law Enforcement & Public Safety > Crime Prevention & Enforcement (1.00)
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