| 
		Medtech firms get personal with digital 
		twins 
		 Send a link to a friend 
		
		 [September 01, 2018] 
		By Caroline Copley 
 HEIDELBERG, Germany (Reuters) - Armed with 
		a mouse and computer screen instead of a scalpel and operating theater, 
		cardiologist Benjamin Meder carefully places the electrodes of a 
		pacemaker in a beating, digital heart.
 
 Using this "digital twin" that mimics the electrical and physical 
		properties of the cells in patient 7497's heart, Meder runs simulations 
		to see if the pacemaker can keep the congestive heart failure sufferer 
		alive - before he has inserted a knife.
 
 The digital heart twin developed by Siemens Healthineers is one example 
		of how medical device makers are using artificial intelligence (AI) to 
		help doctors make more precise diagnoses as medicine enters an 
		increasingly personalized age.
 
 The challenge for Siemens Healthineers and rivals such as Philips and GE 
		Healthcare is to keep an edge over tech giants from Alphabet's Google to 
		Alibaba that hope to use big data to grab a slice of healthcare 
		spending.
 
 With healthcare budgets under increasing pressure, AI tools such as the 
		digital heart twin could save tens of thousands of dollars by predicting 
		outcomes and avoiding unnecessary surgery.
 
 A shortage of doctors in countries such as China is also spurring demand 
		for new AI tools to analyze medical images and the race is on to 
		commercialize products that could shake up healthcare systems around the 
		world.
 
 While AI has been used in medical technology for decades, the 
		availability of vast amounts data, lower computing costs and more 
		sophisticated algorithms mean revenues from AI tools are expected to 
		soar to $6.7 billion by 2021 from $811 million in 2015, according to a 
		study by research firm Frost & Sullivan 
		https://ww2.frost.com.
 
		
		 
		The size of the global medical imaging analytics software market is also 
		expected to jump to $4.3 billion by 2025 from $2.4 billion in 2016, said 
		data portal Statista https://www.statista.com.
 "What started as an evolution is accelerating towards more of a 
		revolution," said Thomas Rudolph who leads McKinsey & Company's 
		https://www.mckinsey.com pharma and medical technology practice in 
		Germany.
 
 'GPS OF HEALTHCARE'
 
 For Siemens Healthineers and its traditional rivals, making the 
		transition from being mainly hardware companies to medical software 
		pioneers is seen as crucial in a field becoming increasingly crowded 
		with new entrants.
 
 Google has developed a raft of AI tools, including algorithms that can 
		analyze medical images to diagnose eye disease, or sift through digital 
		records to predict the likelihood of death.
 
 Alibaba, meanwhile, hopes to use its cloud and data systems to tackle a 
		shortage of medical specialists in China. It is working on AI-assisted 
		diagnosis tools to help analyze images such as CT scans and MRIs.Siemens 
		Healthineers, which was spun off from German parent Siemens in March, 
		has outpaced the market in recent quarters with sales of medical imaging 
		equipment thanks to a slew of new products.
 
 But analysts say the German firm, Dutch company Philips and GE 
		Healthcare, a subsidiary of General Electric, will all come under 
		pressure to prove they can save healthcare systems money as spending 
		becomes more linked to patient outcomes and as hospitals rely on bulk 
		purchasing to push for discounts.
 
 Siemens Healthineers has a long history in the industry. It made the 
		first industrially manufactured X-ray machines in 1896 and is now the 
		world's biggest maker of medical imaging equipment.
 
 Now, Chief Executive Bernd Montag's ambition is to transform it into the 
		"GPS of healthcare" - a company that harnesses its data to sell 
		intelligent services, as well as letting smaller tech firms develop Apps 
		feeding off its database.
 
 As it adapts, Siemens Healthineers has invested heavily in IT. It 
		employs some 2,900 software engineers and has over 600 patents and 
		patent applications in machine learning.
 
 It is not alone. Philips says about 60 percent of its research and 
		development (R&D) staff and spending is focused on software and data 
		science. The company said it employs thousands of software engineers, 
		without being specific.
 
 MEDICAL REVOLUTION
 
 Experts say the success of AI in medical technology will hinge on access 
		to reliable data, not only to create models for diagnosis but also to 
		predict how effective treatments will be for a specific patient in the 
		days and years to come.
 
		
		 
		"Imagine that in the future, we have a patient with all their organ 
		functions, all their cellular functions, and we are able to simulate 
		this complexity," said Meder, a cardiologist at Heidelberg University 
		Hospital https://www.heidelberg-university-hospital.com/home in Germany 
		who is testing Siemens Healthineers' digital heart software.
 "We would be able to predict weeks or months in advance which patients 
		will get ill, how a particular patient will react to a certain therapy, 
		which patients will benefit the most. That could revolutionize 
		medicine."
 
 To this end, Siemens Healthineers has built up a vast database of more 
		than 250 million annotated images, reports and operational data on which 
		to train its new algorithms.
 
 [to top of second column]
 | 
            
			 
            
			An electrode of a pacemaker is pictured with a three-dimensional 
			printout of a human heart at the Klaus-Tschira-Institute for 
			Integrative Computational Cardiology, department of the Heidelberg 
			University Hospital (Universitaetsklinikum Heidelberg), in 
			Heidelberg, Germany, August 14, 2018. REUTERS/Ralph Orlowski 
            
			 
            In the example of the digital twin, the AI system was trained to 
			weave together data about the electrical and physical properties and 
			the structure of a heart into a 3D image.
 One of the main challenges was hiding the complexity and creating an 
			interface that is easy to use, said Tommaso Mansi, a senior R&D 
			director at Siemens Healthineers who developed the software.
 
 To test the technology, Meder's team created 100 digital heart twins 
			of patients being treated for heart failure in a six-year trial. The 
			computer makes predictions based on the digital twin and they are 
			then compared with actual outcomes.
 
 His team hopes to finish evaluating the predictions by the end of 
			2018. If the results are promising, the system will be tested in a 
			larger, multi-center trial as the next step to getting the software 
			approved by regulators for commercial use.
 
 Siemens Healthineers declined to say when the technology might 
			eventually be used by clinics or give details on how its digital 
			heart, or models of other organs it is developing such as the lungs 
			and liver, could be monetized.
 
 IN DATA WE TRUST
 
 Both GE and Philips are also working on versions of digital heart 
			twins while non-traditional players have been active too.
 
 Drawing on its experience of making digital twins to test bridges 
			and machinery, French software firm Dassault Systemes launched the 
			first commercial "Living Heart" model in May 2015, though it is only 
			currently available for research.
 
 Philips sells AI-enabled heart models that can, for example, turn 2D 
			ultrasound images into data that helps doctors diagnose problems, or 
			automatically analyze scans to help surgeons plan operations.
 
 
            
			 
			Its vision, like Siemens Healthineers, is to add more complexity to 
			its existing heart models by pulling together scans, ECGs and 
			medical records to create a model that can predict how a heart will 
			respond to therapy in real life.
 
 For now, such software is still in the early stages of development 
			and companies will have to work with regulators to thrash out how 
			predictive models can be approved before doctors are willing to 
			trust a diagnosis generated by a machine.
 
 Access to high-quality data with enough variation will be crucial, 
			as will be the ability to interpret that data and turn it into 
			something medical professionals can use, say experts.
 
 In particular, models will have to be trained on rare cases as they 
			get closer to perfection, said Vivek Bhatt, chief technology officer 
			at GE Healthcare's clinical care solutions division.
 
 "It's going to be extremely critical to have an ongoing process for 
			getting more data, getting the right kind of data and getting data 
			with those unique cases," he said.
 
 The established medtech players say their long-running relationships 
			with hospitals and research institutes and vast networks of 
			installed machines will give them an edge over new tech entrants.
 
 Siemens Healthineers, GE Healthcare and Philips say their databases 
			are fed with a mixture of publicly-available data, data from 
			clinical trials or from collaborations with hospitals - as well as 
			some data from customers. All the data is made anonymous and only 
			used with patients' consent, they say.
 
 Still, some campaigners and academics worry about patients' data 
			being used primarily by companies as a commercial tool.
 
 Boris Bogdan, managing director at Accenture's 
			https://www.accenture.com life science practice in Switzerland, 
			believes the ownership of data is a gray zone that could lead to a 
			patient backlash if companies start making fortunes from it.
 
 "When Facebook started nobody really cared who owned the 
			information," he said.
 
 "Now that people understand that Facebook earns tremendous money 
			with their data, questions like data privacy, data usage and data 
			monetization are becoming more visible."
 
 (Reporting by Caroline Copley; editing by David Clarke)
 
		[© 2018 Thomson Reuters. All rights 
			reserved.] Copyright 2018 Reuters. All rights reserved. This material may not be published, 
			broadcast, rewritten or redistributed.  
			Thompson Reuters is solely responsible for this content. |