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Global Robotic Nurse Assistant Market to reach USD 2103.82million by 2028

Global Robotic Nurse Assistant Market Size study, By Product Type (Independence Support Robots, Daily Care & Transportation Robots) By End-Use (Hospitals & Clinics, Senior Care Facilities, Homecare Settings), and Regional Forecasts 2022-2028

Product Code: HLSHIT-45264890
Publish Date: 27-09-2022
Page: 200

Global Robotic Nurse Assistant Market is valued approximately USD 805.5 million in 2021 and is anticipated to grow with a healthy growth rate of more than 14.7 % over the forecast period 2022-2028. Robotic Nurse Assistant can be defined as a service robot utilized to facilitate nurses through cooperation during physical tasks (such a patient walking, item fetching, and object delivery) as well as nonphysical tasks (including patient observation and feedback). It is designed to full fill the shortage of the healthcare workforce spicily in places where the number of patients is more than the nurse required. The robotic nurse is designed to be more effective and accurately perform task in lesser time. The growing population of older age people and rising adoption of robots in healthcare facilities as well as strategic initiatives from leading market players are key factors driving the market growth. For instance, according to Statista – In 2021, the global medical robotics market was estimated at USD 11 billion, and the market is projected to grow to USD 44 billion by 2030. Moreover, as per United Nations (UN) estimates – during 2019, the number of persons aged 65 years or over in the world was estimated at 703 million, and as per projections, the number of older persons would grow to 1.5 billion by 2050. Moreover, leading market players are coming up with new products to leverage the growing adoption of Robotic Nurse Assistants. In October 2019, Austin, Texas, USA-based Diligent Robotics, launched its new hospital robot assistant named Moxi. In addition, the company has raised USD 3 million in seed funding to fuel up the launch of Moxi. Also, rising automation in the healthcare industry and the growing emergence of AI and ML technologies would create lucrative growth opportunities for the market during the forecast period. However, a high deployment cost associated with Robotic Nurse Assistants and lack of penetration from leading market players impede the growth of the market over the forecast period of 2022-2028.

The key regions considered for the global Robotic Nurse Assistant Market study include Asia Pacific, North America, Europe, Latin America, and the Rest of the World. North America is the leading region across the world in terms of market share owing to the presence of leading market players as well as the availability of robust healthcare infrastructure in the region. Whereas the Asia Pacific is anticipated to be the fastest growing region due to factors such as rising healthcare infrastructure as well as the rising geriatric population in the region.

Major market players included in this report are:
Hstar Technologies
Diligent Robotics
Toyota Motor Corporation
RIKEN-SRK
SoftBank Robotics
Panasonic Industry
Fraunhofer IPA
Aethon
Georgia Tech
Hitachi, Ltd

The objective of the study is to define the market sizes of different segments & countries in recent years and to forecast the values for the coming eight years. The report is designed to incorporate both qualitative and quantitative aspects of the industry within each of the regions and countries involved in the study. Furthermore, the report also caters the detailed information about the crucial aspects such as driving factors & challenges which will define the future growth of the market. Additionally, the report shall also incorporate available opportunities in micro markets for stakeholders to invest along with the detailed analysis of the competitive landscape and product offerings of key players. The detailed segments and sub-segment of the market are explained below:
By Product Type
Independence Support Robots
Daily Care &Transportation Robots
By End User
Hospitals & Clinics
Senior Care Facilities
Homecare Settings
By Region:
North America
U.S.
Canada
Europe
UK
Germany
France
Spain
Italy
ROE

Asia Pacific
China
India
Japan
Australia
South Korea
RoAPAC
Latin America
Brazil
Mexico
Rest of the World

Furthermore, years considered for the study are as follows:

Historical year – 2018, 2019, 2020
Base year – 2021
Forecast period – 2022 to 2028

Target Audience of the Global Robotic Nurse Assistant Market in Market Study:

Key Consulting Companies & Advisors
Large, medium-sized, and small enterprises
Venture capitalists
Value-Added Resellers (VARs)
Third-party knowledge providers
Investment bankers
Investors

Chapter 1. Executive Summary
1.1. Market Snapshot
1.2. Global & Segmental Market Estimates & Forecasts, 2020-2028 (USD Million)
1.2.1. Global Robotic Nurse Assistant Market, by Region, 2020-2028 (USD Million)
1.2.2. Global Robotic Nurse Assistant Market, by Product Type, 2020-2028 (USD Million)
1.2.3. Global Robotic Nurse Assistant Market, by End User, 2020-2028 (USD Million)
1.3. Key Trends
1.4. Estimation Methodology
1.5. Research Assumption
Chapter 2. Global Robotic Nurse Assistant Market Definition and Scope
2.1. Objective of the Study
2.2. Market Definition & Scope
2.2.1. Scope of the Study
2.2.2. Industry Evolution
2.3. Years Considered for the Study
2.4. Currency Conversion Rates
Chapter 3. Global Robotic Nurse Assistant Market Dynamics
3.1. Robotic Nurse Assistant Market Impact Analysis (2020-2028)
3.1.1. Market Drivers
3.1.1.1. Increasing population of older age people
3.1.1.2. Rising adoption of robots in healthcare facilities.
3.1.1.3. Strategic initiatives from leading market players.
3.1.2. Market Challenges
3.1.2.1. High deployment cost associated with Robotic Nurse Assistant.
3.1.2.2. Lack of penetration from leading market players.
3.1.3. Market Opportunities
3.1.3.1. Rising automation in healthcare industry.
3.1.3.2. Growing emergence of AI and ML technologies.
Chapter 4. Global Robotic Nurse Assistant Market Industry Analysis
4.1. Porter’s 5 Force Model
4.1.1. Bargaining Power of Suppliers
4.1.2. Bargaining Power of Buyers
4.1.3. Threat of New Entrants
4.1.4. Threat of Substitutes
4.1.5. Competitive Rivalry
4.1.6. Futuristic Approach to Porter’s 5 Force Model (2018-2028)
4.2. PEST Analysis
4.2.1. Political
4.2.2. Economical
4.2.3. Social
4.2.4. Technological
4.3. Investment Adoption Model
4.4. Analyst Recommendation & Conclusion
4.5. Top investment opportunity
4.6. Top winning strategies
Chapter 5. Risk Assessment: COVID-19 Impact
5.1.1. Assessment of the overall impact of COVID-19 on the industry
5.1.2. Pre COVID-19 and post COVID-19 Market scenario
Chapter 6. Global Robotic Nurse Assistant Market, by Product Type
6.1. Market Snapshot
6.2. Global Robotic Nurse Assistant Market by Product Type, Performance – Potential Analysis
6.3. Global Robotic Nurse Assistant Market Estimates & Forecasts by Product Type 2018-2028 (USD Million)
6.4. Robotic Nurse Assistant Market, Sub Segment Analysis
6.4.1. Independence Support Robots
6.4.2. Daily Care & Transportation Robots
Chapter 7. Global Robotic Nurse Assistant Market, by End User
7.1. Market Snapshot
7.2. Global Robotic Nurse Assistant Market by End User, Performance – Potential Analysis
7.3. Global Robotic Nurse Assistant Market Estimates & Forecasts by End User 2018-2028 (USD Million)
7.4. Robotic Nurse Assistant Market, Sub Segment Analysis
7.4.1. Hospitals & Clinics
7.4.2. Senior Care Facilities
7.4.3. Homecare Settings
Chapter 8. Global Robotic Nurse Assistant Market, Regional Analysis
8.1. Robotic Nurse Assistant Market, Regional Market Snapshot
8.2. North America Robotic Nurse Assistant Market
8.2.1. U.S. Robotic Nurse Assistant Market
8.2.1.1. Product Type estimates & forecasts, 2018-2028
8.2.1.2. End User estimates & forecasts, 2018-2028
8.2.2. Canada Robotic Nurse Assistant Market
8.3. Europe Robotic Nurse Assistant Market Snapshot
8.3.1. U.K. Robotic Nurse Assistant Market
8.3.2. Germany Robotic Nurse Assistant Market
8.3.3. France Robotic Nurse Assistant Market
8.3.4. Spain Robotic Nurse Assistant Market
8.3.5. Italy Robotic Nurse Assistant Market
8.3.6. Rest of Europe Robotic Nurse Assistant Market
8.4. Asia-Pacific Robotic Nurse Assistant Market Snapshot
8.4.1. China Robotic Nurse Assistant Market
8.4.2. India Robotic Nurse Assistant Market
8.4.3. Japan Robotic Nurse Assistant Market
8.4.4. Australia Robotic Nurse Assistant Market
8.4.5. South Korea Robotic Nurse Assistant Market
8.4.6. Rest of Asia Pacific Robotic Nurse Assistant Market
8.5. Latin America Robotic Nurse Assistant Market Snapshot
8.5.1. Brazil Robotic Nurse Assistant Market
8.5.2. Mexico Robotic Nurse Assistant Market
8.6. Rest of The World Robotic Nurse Assistant Market

Chapter 9. Competitive Intelligence
9.1. Top Market Strategies
9.2. Company Profiles
9.2.1. Hstar Technologies
9.2.1.1. Key Information
9.2.1.2. Overview
9.2.1.3. Financial (Subject to Data Availability)
9.2.1.4. Product Summary
9.2.1.5. Recent Developments
9.2.2. Diligent Robotics
9.2.3. Toyota Motor Corporation
9.2.4. RIKEN-SRK
9.2.5. SoftBank Robotics
9.2.6. Panasonic
9.2.7. Fraunhofer IPA
9.2.8. Aethon
9.2.9. Georgia Tech
9.2.10. Hitachi, Ltd
Chapter 10. Research Process
10.1. Research Process
10.1.1. Data Mining
10.1.2. Analysis
10.1.3. Market Estimation
10.1.4. Validation
10.1.5. Publishing
10.2. Research Attributes
10.3. Research Assumption

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Data Collection:
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Market Size Estimation:
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In our forecasting process, we consider various parameters such as economic tools, technological analysis, industry experience, and domain expertise. By taking all these factors into account, we strive to produce accurate and reliable market forecasts. When forecasting, we take into consideration several parameters, which include:
Market driving trends and favorable economic conditions
Restraints and challenges that are expected to be encountered during the forecast period.
Anticipated opportunities for growth and development
Technological advancements and projected developments in the market
Consumer spending trends and dynamics
Shifts in consumer preferences and behaviors.
The current state of raw materials and trends in supply versus pricing
Regulatory landscape and expected changes or developments.
The existing capacity in the market and any expected additions or expansions up to the end of the forecast period.
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