DOTmed Home MRI Oncology Ultrasound Molecular Imaging X-Ray Cardiology Health IT Business Affairs
News Home Parts & Service Operating Room CT Women's Health Proton Therapy Endoscopy HTMs Mobile Imaging
SEARCH
Ubicación actual:
>
> This Story

starstarstarstarstar (1)
Conexión o Registro to rate this News Story
Forward Printable StoryPrint Comment
advertisement

 

advertisement

 

CT Homepage

Why settle for less when you can have more with spectral CT? Dr. Amit Gupta describes the benefits that dual-energy spectral CT brings to radiology

More than half of patients who undergo diagnostic imaging feel anxious: survey A need for greater face-to-face interactions and consultations

From the frontlines to the frontier: CT trends and innovations Workflow is getting smarter and machine learning is changing everything

Ten-year study touts low-dose CT as standard for lung cancer screening Identify and address risk of cancer early on

New Philips MR and CT scanners debut at ASTRO CT system, Big Bore RT, and Ingenia MR-RT take aim at radiotherapy outcomes

Fujifilm enters US CT market with eye on radiotherapy treatment planning Wide bore FCT Embrace has 64- and 128-slice configurations

A dose of sophistication comes to CT protocols In 2018, dose optimization means getting everyone involved

GE to provide training to at least 140 Kenyan radiographers Partnering with Society of Radiography in Kenya

Spectral CT, workflow and dose reduction drive new CT scanner and software releases

Purchasing insight: Navigating the CT market Important considerations when it's time to shop around

Glassbeam has expanded its technology for
detecting anomalies in components of
CT scanners such as tube temperature

Glassbeam unveils AI anomaly detection for imaging modality maintenance

por John R. Fischer , Staff Reporter
Maintenance and repair for CT scanners may soon be more immediate, less frequent and more affordable following the upcoming expansion of Glassbeam Inc.’s anomaly detection technology.

The machine data analytics company elaborated on the development at the AAMI 2018 Conference and Expo in Long Beach, California, referring to it as a part of its approach for utilizing AI capabilities to detect and alert providers to changes in components of computed tomography scanners from tube temperature to waterflow. They plan to eventually include other critical imaging modalities such as MR.

Story Continues Below Advertisement

Dunlee announces the relaunch of DA135 CT/e, DA165NP and Akron tubes

Dunlee announces the return of the DA135 CT/e, DA165NP, S532B and S532Q(known as the Akron tubes) CT Replacement tubes, making its full portfolio of CT tubes for GE and Siemens CT scanners available once again.Click to learn more



“Instead of a human being saying that the temperature pressure has shot beyond portable range, the machine alerts you by looking up the historical data of the temperature reading and saying the temperature should be between this high range and this low range. That is the anomaly direction model,” Puneet Pandit, president and CEO of Glassbeam, told HCB News. “The machine will look at the historical data, create the threshold and then alert the engineers when the threshold is crossed.”

CT scanners are equipped with sensors for monitoring different variables such as water temperature, waterflow, air temperature, fan speed, and tube temperature. Though each sensor periodically records its readings to determine if tracked variables are in the normal range, the task of accurately identifying which sensor readings are in the normal range and which ones are not is complex, often leading many to use a rule of thumb to form manually-defined thresholds.

ML-based AD techniques use historical data to train a model that can be used for detecting anomalous sensor values.

With Glassbeam’s technology, providers can utilize machine learning-based AD techniques to predict anomalies from historical data sets and address issues earlier, saving millions in maintenance costs, as well as being able to plan out more efficiently strategic actions for the management of their imaging modalities.

In addition to detecting single abnormal readings, the technology may be used to detect combinations of these readings from two or more different sensors, further helping Glassbeam raise mean time between failures and machine uptime from the industry standard range of 96-97 percent to more than 99.5 percent.

The expansion is the second phase of an initiative launched in February in which machine learning was deployed to detect with high accuracy tube failure in CTs, seven to ten days prior to the actual occurrence of such events.
  Pages: 1 - 2 >>

CT Homepage


You Must Be Logged In To Post A Comment

Anuncie
Aumente su conciencia de marca
Subastas + ventas Privadas
Consigue el mejor precio
Comprar Equipo/Piezas
Encuentra El Precio Más Bajo
Noticias diarias
Lee las últimas noticias
Directorio
Examina todos los usuarios DOTmed
Ética en DOTmed
Ver nuestro programa de ética
El oro parte programa del vendedor
Recibir las solicitudes de PH
Programa de distribuidor con servicio gold
Recibe solicitudes
Proveedores de atención de salud
Ver todos los HCP (abreviatura de asistencia médica) Herramientas
Trabajos/Entrenamiento
Encontrar/rellenar un trabajo
Parts Hunter +EasyPay
Obtener presupuestos para piezas
Certificado recientemente
Ver usuarios certificados recientemente
Recientemente clasificado
Ver usuarios certificados recientemente
Central de alquiler
Alquila equipos por menos
Vende equipos/piezas
Obtén más dinero
Mantenga el foro de los técnicos
Buscar ayuda y asesoramiento
Petición sencilla de propuestas
Obtén presupuestos para equipos
Feria comercial virtual
Encuentra servicio para el equipo
El acceso y el uso de este sitio está conforme a los términos y a las condiciones de nuestro AVISO LEGAL & AVISO DE LA AISLAMIENTO
Característica de y propietario DOTmeda .com, inc. Copyright ©2001-2018 DOTmed.com, Inc.
TODOS LOS DERECHOS RESERVADOS