Events Calendar

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A Behavioral Health Collision At The EHR Intersection
2014-09-30    
2:00 pm - 3:30 pm
Date/Time Date(s) - 09/30/2014 2:00 pm Hear Why Many Organizations Are Changing EHRs In Order To Remain Competitive In The New Value-Based Health Care Environment [...]
Meaningful Use and The Rise of the Portals
2014-10-02    
12:00 pm - 12:45 pm
Meaningful Use and The Rise of the Portals: Best Practices in Patient Engagement Thu, Oct 2, 2014 10:30 PM - 11:15 PM IST Join Meaningful [...]
Adva Med 2014 The MedTech Conference
2014-10-06    
All Day
Adva Med 2014 The MedTech Conference October 6-8, 2014 McCormick Place Chicago, IL For more information, visit, advamed2014.com For Registration details, click here  
Public Health Measures Meaningful Use
2014-10-09    
12:00 pm - 12:45 pm
Public Health Measures Meaningful Use: Reporting on Public Health Measures Join Meaningful Use expert Jim Tate for a three part series of webinars addressing MU [...]
2014 Hospital & Healthcare I.T. Conference
2014-10-13    
All Day
Join us at our 2014 Hospital & Healthcare I.T. Conference and experience the following: Up to 125 Hospital & Healthcare I.T. executives from America’s most prestigious [...]
Connected Health Care 2014
Key Trends That will be Discussed at the Conference! Connected Healthcare 2014 is set to explore the crucial topics that are revolutionizing the connected health industry: [...]
HealthTech Conference
2014-10-14    
All Day
HealthTech Capital is a group of private investors dedicated to funding and mentoring new "HealthTech" start ups at the intersection of healthcare with the computer [...]
Health Informatics & Technology Conference (HITC-2014)
2014-10-20    
All Day
Information technology has ability to improve the quality, productivity and safety of health care mangement. However, relatively very few health care providers have adopted IT. [...]
HIMSS Amsterdam 2014
2014-10-20    
12:00 am
About HIMSS Amsterdam 2014 This year, the second annual HIMSS Amsterdam event will be taking place on 6-7 November 2014 at the Hotel Okura. The [...]
Patient Portal Functionality and EMR Integration Demonstration
2014-10-22    
2:00 pm - 3:30 pm
This purpose of this webcast is to present a demonstration to show how the Patient Portal integrates with EMR, as well as discuss how this [...]
Connected Health Symposium 2014
Symposium 2014 - Connected Health in Practice: Engaging Patients and Providers Outside of Traditional Care Settings Collaborating with industry visionaries, clinical experts, patient advocates and [...]
CHIME College of Healthcare Information Management Executives
2014-10-28 - 2014-10-31    
All Day
The Premier Event for Healthcare CIOs Hotel Accomodations JW Marriott San Antonio Hill Country 23808 Resort Parkway San Antonio, Texas 78761 Telephone: 210-276-2500 Guest Fax: [...]
The Myth of the Paperless EMR
2014-10-29    
2:00 pm - 3:00 pm
Is Paper Eluding Your Current Technologies; The Myth of the Paperless EMR Please join Intellect Resources as we present Is Paper Eluding Your Current Technologies; The Myth [...]
Events on 2014-09-30
Events on 2014-10-02
Events on 2014-10-06
Events on 2014-10-09
Events on 2014-10-13
Events on 2014-10-14
Connected Health Care 2014
14 Oct 14
San Diego
HealthTech Conference
14 Oct 14
San Mateo
Events on 2014-10-20
HIMSS Amsterdam 2014
20 Oct 14
Amsterdam
Events on 2014-10-23
Events on 2014-10-28
Events on 2014-10-29
Latest News

How to Market Healthcare Artificial Intelligence Software

healthcare
App stores may help hospitals manage scores of new apps from dozens of vendors as AI apps gain FDA clearance

Hands down, the hottest topic in radiology the past two years has been the implementation of artificial intelligence (AI) in radiology and how it will be integrated into medical imaging. As products now begin gaining U.S. Food and Drug Administration (FDA) market clearance, the next question with this potential technology revolution is how exactly to integrate the scores of new software applications from a large number of vendors into daily practice.

The majority of the new AI software is coming from small startup companies and each piece of software cleared by the FDA covers one very specific medical imaging diagnostic review. Radiology experts have started asking how AI technology will be viable if it requires hundreds of contracts and integration of a large number of disparate software programs into the hospital or enterprise imaging system PACS. They say the need to deal with a large number of small companies for various pieces of the AI puzzle would be a nightmare for legal review, contracts and hospital IT departments.

At the 2018 Radiological Society of North America (RSNA) meeting, about 150 companies showed technology that integrates some level of AI or deep learning. Many were concentrated in the specific Machine Learning Showcase area. However, only a small handful of these vendors actually have an FDA cleared project. But, this is changing rapidly and the number of new AI applications for medical imaging is expected to explode the next couple years. While these technologies may offer improved outcomes by immediately differentiating between a hemorrhagic and ischemic stroke, or identify a pneumothorax during a bedside X-ray, there are reservations in the market as to how this technology from numerous vendors can logically be implemented.

The Creation of AI App Stores

Taking a note from Apple’s App Store, larger healthcare IT vendors are starting to partner with smaller companies to provide a combination of home-grown and third-party apps through a web-based AI app store platform. Partnering companies need to meet compatibility and interface requirements that match those of the primary vendor’s products to allow plug-and-play use. This model allows hospitals a single location and vendor to purchase AI software that offer a common IT interface.

Elements of these platforms started to appear in early 2017, with the introduction of Siemen’s Digital Ecosystem. That platform offers an online menu of apps from Siemens and partner IT firms, including some that offer AI enabled technology. At RSNA 2018, numerous companies announced the creation of, or expanded capabilities of, AI app stores. Examples include TeraRecon’s Envoy AI, and AI app stores offered by Blackford, Visage, Sectra and IBM Watson.

IBM Watson announcing at RSNA 2018 it is starting to partner with various AI vendors to offer their products on its new AI Marketplace. This was an interesting revelation, because IBM Watson was previously perceived to be the 500-pound gorilla in the medical AI space. The company originally planned to start rolling out a series of its own, in-house developed AI solutions across the healthcare spectrum. However, the company faced set backs like MD Anderson ending its partnership on cancer imaging AI, and the slow progress in commercializing AI products while many small startups began getting FDA clearances for AI clinical review products. In a booth presentation at RSNA, Steve Tolle, VP, global strategy and business development, acknowledged a single vendor cannot yet be all things to all people in the AI space. In order to be a major player in the growing AI market, he said the company needed to partner to offer access to a wide variety of AI apps.

Tolle said IBM Watson’s AI Marketplace will offer standardized application programming interfaces (API) for building or integrating third party software with availability through the IBM Cloud.

GE Healthcare at RSNA unveiled its Edison platform, which is designed to help accelerate the development and adoption of new technologies, especially AI. GE’s clinical partners would use the newly branded platform to develop algorithms and speed the path of advances in data processing to Edison applications and smart devices.

 

Where is AI Being Implemented in Medical Imaging?

There are four main areas where AI is being implemented:

1. Computer-aided diagnosis
2. Clinical decision support
3. Quantitative analysis tools
4. Computer-aided detection

Automated quantification tools are entering a level of maturity and acceptance in the market, with AI making measurements from imaging exams and auto filling fields or performing calculations that were previously manual and time consuming. However, new frontiers in AI-driven auto quantification tools include radiomics, imaging biomarkers and virtual biopsies.

AI-drive quantitative analysis tools also are being used in data analytics software used for departmental and hospital business management. Rather than the old and cumbersome process of running Crystal reports or manually tabulating data points, AI software can data mine connected electronic medical records, billing systems, patient scheduling and even individual scanning equipment. This data can be mined for everything from the amount of X-ray dose used by specific technologists or machines for specific exam protocols, to predictive analytics software that can pin point which days and times there were be back ups in the radiology department when additional staff should be scheduled.

The newer AI areas of computer-aided diagnosis and clinical decision support were only recently introduced into the market and may take several years before they are found in general use. The primary areas where AI image diagnostic software is being developed and commercialized is for critical findings such as stroke or other maladies where timing is crucial. Other areas include identification of incidental findings and tools to reduce the time it takes to review complex exams, or to help auto triage patients who need additional or more immediate care.

Computer-aided detection has been around for years, but with the addition of machine learning algorithms, experts in the field are calling the newer generation AI-supported software “CAD that works,” because of its much lower rate of false positives.

Lots of Data is Needed to Validate AI

A big question in AI, especially with diagnostic algorithms, is how it gets validated. Large amounts of de-identifed data is needed to train deep learning software. At RSNA 2018, Philips Healthcare unveiled its IntelliSpace Discovery 3.0 platform to help facilitate the AI training data required. It is an advanced visualization and analysis platform designed specifically to support imaging research, and an extended version of its IntelliSpace Enterprise Edition that includes Philips’ PerformanceBridge. Providers at dozens of institutions are already using the Discovery 3.0 version to prepare patient data to train and validate deep learning algorithms.

Source