Strategic Investment Decisions for Emerging Technology Fields in the Health Care Sector Based on M&A Analysis
Abstract
:1. Introduction
2. Literature Review
2.1. Emerging Technology Trend Assessment
- Timeliness of knowledge database: this is a particular problem in contemporary analyses, because they rely on data that are only available after publication [11]. Dynamic estimation approaches of investment determinants are recommended with respect to the dynamic nature of investment decisions [34].
- Exclusion of “uncertainty and ambiguity”: the uncertainty of emerging technologies is difficult to measure and, thus, is often neglected [37].
- Absence of policymaker participation for strategic technology and R&D investment management: customer-based technology forecasts, combined with the computer-based analytic approach, have gained popularity as a demonstration of market acceptance [25].
Reference | Research Objective (Relationship between X and Y) | Data Type | Characteristics of Proposed Model (or Findings) | Research Context | Methodology |
---|---|---|---|---|---|
[38] | (X) Crowdfunding; (Y) Venture Capital (VC) investments | Financial | Confirms impact of crowdfunding campaigns on a subsequent increase in VC investments | Hardware, Media, Fashion industries | Non-stationarity and Granger causality of time-series |
[39] | (X) Government policies; (Y) R&D investment | Financial | Confirms the impact of public R&D subsidies and collaboration increases R&D investment | Agricultural biotechnology industry | Econometric |
[40] | (X) Technology convergence; (Y) Market convergence forecast | M&A Activity | Predicts future market converging pattern based on technology convergence | Biotechnology industry | DEMATEL, Link prediction algorithm |
[41] | (X) IPO activity; (Y) M&A activity paradigm | M&A Activity | Evaluates firm’s trade-off in being acquired based on the extent of the synergies arising from a potential M&A activity | Technology industry and Young Innovative Companies in US | Text-based similarity, time-series regression |
[42] | (X) Technological characteristics of patent; (Y) Citation performance of patent | Patent | Proposes a machine learning approach utilizing multiple patent indicators to identify an early-stage emerging technology | Pharmaceutical technology | Feed-forward multilayer neural network |
[37] | (X) research capability of research organizations; (Y) Promising research frontiers | Patent, Bibliometric | The results from scientific papers and patents are proper to suggest themes for research in the relatively long-term and short-term perspective, respectively | Information and communication technology | Bibliometric analysis |
[43] | (X) Investment strategy in big data analytics; (Y) Financial profit | Financial | Predicts the impact of (i) differentiated consumer densities firms on quality competition; and (ii) big data analytics investment strategy on financial profit | Health Care services | Game theory |
[44] | (X) Entropy and binding force of International Patent Classification; (Y) Interaction and attraction of technological convergence | Patent | Services with adapted wireless communication networks have the highest binding force; and visible signaling systems are associated with technology convergence | Information and communication technology | Entropy and gravity, social network, and association rule analyses |
[45] | (X) Technological knowledge flow matrix; (Y) Interdisciplinary trend | Patent | Illustrates a visual map that shows pattern of industrial technology fusion | New and renewable energy-based railway technology | Patent network analysis |
[46] | (X) Patent citation indicators; (Y) Overlapping technology fields and the emergence of new technological opportunities | Patent | Uses different patent citation indicators to recognize trajectory changes in the industry and technology convergence trends | RFID value chain | Patent citation analysis |
[47] | (X) Investment policy; (Y) Economic growth | Financial | Confirms infrastructure and building–residential investments have direct relations with the GDP | Construction industry in Turkey | Granger causality, Engle-Granger cointegration |
[48] | (X) Academic publications; (Y) Emerging research topic | Bibliometric | Predicts the future core articles via the betweenness centralities in the citation network of the research | Regenerative medicine | Topological clustering method, visualize citation networks analysis |
[49] | (X) Geographic proximity; (Y) R&D collaboration | Co-publication | Identifies firms collaboration strategies and their choices for the R&D sites’ location | Pharmaceutical industry | Regression and Zero-inflated gravity model |
This study | (X) M&A activity number and value; (Y) Emerging technology | Financial | Illustrates future emerging technology based on the historical M&A activity data with time-lag perspective | Health Care Industry | Promising Index analysis |
2.2. M&A Data-Based Approach
3. Methods
3.1. Research Framework
3.2. Data Collection
3.3. Promising Index
3.4. Promising Index Sharpe Ratio
4. Longitudinal Analysis of M&A Trends in the Health Care Sector
5. Main Results
5.1. Overall Emerging Trend Assessment in the Health Care Sector
5.2. Integrative Emerging Trend Assessment and Benchmarking Approaches
- Evaluation period adjustment function: the decision maker defines a target period for calculating Promising Index (PI) and the PISR rank, which evaluates based on the average and standard deviation of PI.
- Weight adjustment function: it provides a function to adjust the weight of the weight variables, including wvn, wvv, wan, and wav. The sum of each weight equals 1.
6. Discussion
6.1. Integrating M&A Information to Resolve the Time Lag Issue in Emerging Technology Foresight
6.2. Dealing with Market Trend Irregularity
6.3. Managing Expectations of Investors for Emerging Technology and Industry
7. Conclusions and Limitations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Characteristics of M&A Data | Example |
---|---|
Information reliability |
|
Standardized structure |
|
Aggregated data |
|
Timeliness information |
|
Notation | Descriptions |
---|---|
Index of Health Care sub-industry (HCSI) (i = 1, …, 10) | |
Index of period (t = 1, …, n) | |
Number of M&A activities for HCSI i during a period of time t | |
Number of M&A activities excluding activities with unavailable financial data for HCSI i during a period of time t | |
Total value of M&A activities excluding activities with unavailable financial data for HCSI i during a period of time t | |
, average value of M&A activities for HCSI i during a period of time t | |
, estimated value of M&A activities for HCSI i during a period of time t | |
Cumulative M&A activities number for HCSI i during a period of time t | |
Cumulative M&A activities value for HCSI i during a period of time t | |
Velocity of M&A activities number for HCSI i during a period of time t | |
Velocity of M&A activities value for HCSI i during a period of time t | |
Acceleration of M&A activities number for HCSI i during a period of time t | |
Acceleration of M&A activities value for HCSI i during a period of time t | |
Normalized values from 0 to 1 for | |
Normalized values from 0 to 1 for | |
Normalized values from 0 to 1 for | |
Normalized values from 0 to 1 for | |
Weight of the velocity of M&A activities number | |
Weight of the acceleration of M&A activities number | |
Weight of the velocity of M&A activities value | |
Weight of the acceleration of M&A activities value |
HCSI (i) | Number of M&A Activities | Value of M&A Activities | ||||
---|---|---|---|---|---|---|
Standardized Coefficient (β) | p-Value | R2 | Standardized Coefficient (β) | p-Value | R2 | |
1. Biotechnology | 6.404 | 0.0047 *** | 0.4995 | 13693 | 0.0022 *** | 0.4995 |
2. Health Care Distributors | 1.780 | ‒0.172 | 0.1497 | 2415 | 0.0482 ** | 0.1497 |
3. Health Care Equipment | 2.191 | 0.312 | 0.0847 | 3409 | 0.3095 | 0.0847 |
4. Health Care Facilities | 36.160 | 0.0001 *** | 0.7287 | 2292 | 0.4060 | 0.7287 |
5. Health Care Services | 35.569 | 1.77e−5 *** | 0.7963 | 17337 | 0.0137 ** | 0.7963 |
6. Health Care Supplies | 1.066 | 0.333 | 0.0780 | ‒9.037 | 0.997 | 0.0780 |
7. Health Care Technology | 15.099 | 1.46e−7 *** | 0.9076 | 4551 | 0.0018 *** | 0.9076 |
8. Life Sciences Tools & Services | 7.8593 | 3.26e−7 *** | 0.8945 | 2299 | 0.147 | 0.8945 |
9. Managed Health Care | 0.2484 | 0.707 | 0.0122 | 11063 | 0.231 | 0.0122 |
10. Pharmaceuticals | 10.730 | 0.0043 *** | 0.5070 | 1405 | 0.8445 | 0.5070 |
i = 1 | i = 2 | i = 3 | i = 4 | i = 5 | i = 6 | i = 7 | i = 8 | i = 9 | i = 10 | |
---|---|---|---|---|---|---|---|---|---|---|
2005 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 |
2006 | 826 | −14,212 | −12,702 | 98,932 | 8321 | 15,845 | 3491 | 38,073 | 59,936 | 33,833 |
2007 | −21,985 | 2332 | 17,702 | −72,098 | 21,135 | 12,220 | 93 | −23,066 | −81,759 | 25,195 |
2008 | 127,116 | −777 | −82,527 | −62,625 | −29,567 | 19,391 | −4434 | 3914 | −11,354 | −70,358 |
2009 | −85,951 | −2572 | 6704 | 5161 | 4926 | −35,191 | 4345 | −14,484 | 1421 | 221,645 |
2010 | 24,882 | 9555 | 12,083 | 25,234 | 19,815 | 111,790 | 6325 | 18,334 | 15,092 | −242,581 |
2011 | −27,785 | 15,393 | 94,404 | −15,336 | 170,489 | −115,949 | −1998 | −2479 | −1907 | 36,348 |
2012 | 8526 | 8007 | −70,959 | 4484 | −135,401 | −2464 | 105 | −17,994 | 42,708 | −38,048 |
2013 | 8642 | −4326 | −20,488 | 31,148 | −46,128 | 26,342 | −1291 | 62,579 | −52,768 | 22,668 |
2014 | 3372 | 38,136 | 153,213 | −12,371 | 40,642 | 23,845 | 16,768 | −21,377 | 32,991 | 301,966 |
2015 | 97,083 | −43,684 | −111,674 | 35,554 | 115,717 | −54,980 | −1373 | −27,425 | −18,420 | −118,118 |
2016 | 16,465 | −21,938 | 38,956 | −13,620 | −72,574 | 44,796 | 62,633 | 8038 | 1737 | −159,665 |
2017 | −56,220 | 28,449 | 9520 | 57,151 | −30,385 | −31,644 | −55,821 | 57,743 | 502,499 | −38,442 |
2018 | 164,817 | 5770 | −62,298 | −42,670 | 345,514 | 4850 | 33,615 | −66,559 | −498,296 | 25,092 |
Sub-Industry (i) | |||
---|---|---|---|
1. Biotechnology | 0.456 | 0.243 | 5 |
2. Health Care Distributors | 0.499 | 0.195 | 1 |
3. Health Care Equipment | 0.477 | 0.216 | 2 |
4. Health Care Facilities | 0.450 | 0.194 | 7 |
5. Health Care Services | 0.369 | 0.218 | 10 |
6. Health Care Supplies | 0.454 | 0.205 | 6 |
7. Health Care Technology | 0.468 | 0.183 | 3 |
8. Life Sciences Tools & Services | 0.461 | 0.196 | 4 |
9. Managed Health Care | 0.406 | 0.171 | 8 |
10. Pharmaceuticals | 0.377 | 0.189 | 9 |
Figure | wvn | wvv | wan | wav | |
---|---|---|---|---|---|
Strategic decision I | Short-Long strategy | 0.25 | 0.25 | 0.25 | 0.25 |
Strategic decision II | Short strategy | 0.4 | 0.04 | 0.1 | 0.1 |
Strategic decision III | Long strategy | 0.1 | 0.1 | 0.4 | 0.4 |
HCSI (i) | PISR Measures | PISR Rank | ||||
---|---|---|---|---|---|---|
Short-Long | Short | Long | Short-Long | Short | Long | |
1. Biotechnology | 0.060 | −0.034 | 0.141 | 6 | 7 | 3 |
2. Health Care Distributors | 0.294 | 0.274 | 0.287 | 1 | 1 | 1 |
3. Health Care Equipment | 0.164 | 0.204 | 0.111 | 2 | 3 | 5 |
4. Health Care Facilities | 0.042 | 0.254 | −0.190 | 7 | 2 | 8 |
5. Health Care Services | −0.335 | −0.208 | −0.445 | 9 | 8 | 10 |
6. Health Care Supplies | 0.060 | 0.139 | −0.019 | 5 | 4 | 7 |
7. Health Care Technology | 0.145 | 0.059 | 0.238 | 3 | 6 | 2 |
8. Life Sciences Tools & Services | 0.098 | 0.097 | 0.084 | 4 | 5 | 6 |
9. Managed Health Care | −0.207 | −0.512 | 0.115 | 8 | 10 | 4 |
10. Pharmaceuticals | −0.344 | −0.365 | −0.293 | 10 | 9 | 9 |
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Choi, J.; Shin, N.; Chang, Y.S. Strategic Investment Decisions for Emerging Technology Fields in the Health Care Sector Based on M&A Analysis. Sustainability 2021, 13, 3644. https://doi.org/10.3390/su13073644
Choi J, Shin N, Chang YS. Strategic Investment Decisions for Emerging Technology Fields in the Health Care Sector Based on M&A Analysis. Sustainability. 2021; 13(7):3644. https://doi.org/10.3390/su13073644
Chicago/Turabian StyleChoi, Jinho, Nina Shin, and Yong Sik Chang. 2021. "Strategic Investment Decisions for Emerging Technology Fields in the Health Care Sector Based on M&A Analysis" Sustainability 13, no. 7: 3644. https://doi.org/10.3390/su13073644
APA StyleChoi, J., Shin, N., & Chang, Y. S. (2021). Strategic Investment Decisions for Emerging Technology Fields in the Health Care Sector Based on M&A Analysis. Sustainability, 13(7), 3644. https://doi.org/10.3390/su13073644