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      "text": "Technology innovation—especially in areas like artificial intelligence and robotics—will play an important part in addressing this challenge. For example, new generations of elder-care robots will be equipped to take on activities like heavy lifting, aided walking, washing and grooming, monitoring health and wellbeing, and communication on behalf of their patients. As a world leader in robot innovation and application, Japan could be among the first movers to mainstream robotic automation into its elder-care sector.",
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      "text": "Breaking down the role of an elder-care worker into 23 critical tasks and focusing on 12 that are amenable to automation, our analysis suggests that about 23% of the elder-care workload could be handled by robotic assistants, expanding the capacity of care by the same body of healthcare workers. This is equivalent to contributing $1.8 billion each year in wage value by 2030. It also promises to transform the job satisfaction of the human care workforce by reducing work-related injuries, removing monotonous tasks and preventing overwork.",
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      "text": "Japan's 'super-aged' society means the country faces the challenge of an aging and shrinking population earlier than many other industrialized economies. Currently, around 28% of the population is aged over 65. By 2050, that figure is expected to rise to 40%. One consequence of this is a growing shortage of healthcare professionals. And this challenge isn't limited to Japan. In Southeast Asia, for example, an extra 4.7 million healthcare workers are expected to be needed by the end of this decade.",
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