Public R&D Projects-Based Investment and Collaboration Framework for an Overarching South Korean National Strategy of Personalized Medicine
Abstract
:1. Introduction
1.1. Background Study through Literature Review
1.1.1. PM Initiative in South Korea
1.1.2. Main Elements in the Value Chain of Personalized Medicine
1.1.3. Theories and Empirical Review
1.2. Research Purpose and Questions
- Research Question 1-1: What are the expenditures of R&D projects in PM-related fields in which the South Korea government has invested over the past 5 years (2015–2020)?
- Research Question 1-2: What are the expenditures of R&D projects in PM-related fields in which the South Korea government has invested from a regional perspective?
- Research Question 2-1: What has been the trend of investment in PM-related fields in which the South Korea government has invested over the past 5 years (2015–2020)?
- Research Question 2-2: What were the regional portions of the government R&D funding in PM-related technologies?
- Research Question 3-1: What kinds of organizations (university, industry, research institutes, and hospital) have contributed to PM-related technologies from a viewpoint of regions?
- Research Question 3-2: From a regional perspective, which organizations may be served as overarching collaborative R&D partners in each PM-related technology?
2. Materials and Methods
2.1. Data Collection and Preprocessing
2.2. Co-Occurrence Matrix
2.3. Clustering and Network Visualization
2.4. Defining the PM-Related Research Fields
3. Results
3.1. PM-Related Research Fields of Public R&D Projects
- Cluster 1. Bigdata infrastructure for PM (Omics: Omics-bioinformatics based analysis): Research on the establishment of a core infrastructure for PM based on human informatics, including genomics, transcriptomics, proteomics, and metabolomics.
- Cluster 2. Empirical and clinical studies for PM (Clinical information: Clinical information-based analysis): Research on the system that collects daily life health information, such as pulse and heartrate from wearable devices for personal health management.
- Cluster 3. Medical and healthcare services (Service: Medical and healthcare services): Research on data infrastructure that allows storing, processing, and analyzing various medical bigdata (genomic information, health and disease information, living environmental information), while collecting and integrating various medical and health sources such as personal, hospital, and government agencies.
- Cluster 4. Bigdata infrastructure for PM (Smart-health: Smart-health device-based analysis): Research on the development and verification of algorithms that use medical bigdata from various medical and health sources.
- Cluster 5. Empirical and clinical studies for PM (Drug: Drug discovery, pre-clinical, and clinical studies): Research on the companion diagnosis, molecular diagnosis, pharmacogenomic analysis, early diagnosis, liquid biopsy technology, and pre-clinical/clinical test.
- Cluster 6. Empirical and clinical studies for PM (Therapies: Targeted therapies): Research on biomarker analysis utilization, diagnostic kit (next-generation sequencing panel, single nucleotide polymorphisms chip, biochip), and AI-based decision-making support.
- Cluster 7. Bigdata infrastructure for PM (Cohort: Cohort-based clinical data platform): Clinical research on developing personalized treatments including drug prescriptions, medical devices, and treatment programs based on specific genes and environmental factors using medical and health bigdata.
- Cluster 8. Empirical and clinical studies for PM (Prediction: Prediction and diagnosis): Research on the public health service to promote PM industry through adopting disease genome analysis service, direct to consumer, and decision support system application in the current medical system.
3.2. Status of Government Investment in PM
3.2.1. Status of Public R&D Projects from a Regional Perspective
3.2.2. Status and Trend of Public R&D Projects by Technology Clusters
3.2.3. Status of Public R&D Projects According to Technology Clusters and Regions
3.2.4. Status of Public R&D Projects According to Technology Clusters, Regions, and Organization Types
3.2.5. Potential National Collaborative Partners in R&D Related to Three Targeted Diseases
4. Discussion
Discussion for Collaborative Overarching R&D Strategy on PM
5. Conclusions
Limitations and Further Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Regions | Unique Identification Number (ID) | Organization | Type of Organization | Research Program | Funding (USD Thousand) | Project Period | Project Contents | ||
---|---|---|---|---|---|---|---|---|---|
Start Date | End Date | Title | Abstract | ||||||
Ulsan | 1711117189 | Ulsan University | University | Omics-based precision medical technology development project | 51 | 9-1-2019 | 12-31-2024 | Development of algorithm and integrative platform for precision medicine | Through the treatment of current biologics available in severe asthma patients using such a treatment response and omics data a new phenotype and cluster through a disturbing effect and select such as to minimize the problem, statistical models developed: PRISM 1 Research. PRISM adaptive design can be applied based on the first results (adaptive design), developing and proposing guidelines for biological agents through clinical tests in the selection of patients with severe asthma: study PRISM 2. |
Seoul | 1465030239 | Samsung Medical Center | Hospital | CDM-based precision medical data integration platform | 149 | 4-17-2019 | 12-31-2021 | Development of Establishment, Verification and Deployment platform of CDM-based intelligent Clinical Decision Support System for Emergency and Critical Patients | First Year (1) Development Goals: General: Consumer emergency center, intensive care CDM extended model development and standardization (based on research) 1 Details: First, Chinese characters CDM extended model standardization and deployment (2) research content and scope (using the system configuration figure, representing the structure, etc.). General (detail 1) research and development information, demand survey carried out in emergency, artificial intelligence algorithms intended for physicians and researchers in the intensive care unit; explore the variables required to build a CDM-based intelligent precision medical identification algorithm. |
Daejeon | 1711119491 | Korea Research Institute of Bioscience and Biotechnology | Research institute | Bio Bigdata | 8211 | 5-29-2020 | 12-31-2021 | Construction of infrastructure for genome big data | (1) Rare, one of the leading business resources and data secure. Holds data of government business resources (leading to business) and a data connection to secure dielectric data (10,000) The dielectric holds leading business (5000) and clinical information (5000) selected by linking genomic data. Rare diseases dielectric secure data (10,000). (2) Creating a dielectric sequencing and analysis report. Leading business and genomic data production of new rare disease samples (15,000). |
Search Terms | Time Period | Amount of Raw Data | Final Number of Data Utilized |
---|---|---|---|
((precision OR personalized OR personalised OR individualised OR individualized OR customized OR customized OR tailored OR targeted OR predictive OR preventive) AND (medicine OR therapy OR health OR treat OR cohort)) OR “3P medicine” OR “4P medicine” OR (omics AND (research OR technology)) | 2015–2020 | 8478 | 5647 |
Region | Funding (USD Thousand) | No. of Projects | Funding Per Project | Funding (%) |
---|---|---|---|---|
Gangwon-do | 32,145 | 138 | 233 | 2.3% |
Gyeonggi-do | 210,138 | 1073 | 196 | 14.9% |
Gyeongsangnam-do | 17,285 | 95 | 182 | 1.2% |
Gyeongsangbuk-do | 19,722 | 91 | 217 | 1.4% |
Gwangju | 22,779 | 131 | 174 | 1.6% |
Daegu | 67,088 | 163 | 412 | 4.8% |
Daejeon | 168,691 | 440 | 383 | 12.0% |
Busan | 22,888 | 125 | 183 | 1.6% |
Seoul | 634,143 | 2669 | 238 | 45.0% |
Sejong | 1208 | 8 | 151 | 0.1% |
Ulsan | 66,388 | 282 | 235 | 4.7% |
Incheon | 16,825 | 82 | 205 | 1.2% |
Jeollanam-do | 2257 | 10 | 226 | 0.2% |
Jeollabuk-do | 16,153 | 64 | 252 | 1.1% |
Jeju | 1199 | 9 | 133 | 0.1% |
Chungcheongnam-do | 11,908 | 77 | 155 | 0.8% |
Chungcheongbuk-do | 97,688 | 190 | 514 | 6.9% |
Total/Average | 1,408,505 | 5647 | 249 | 100.0% |
Value Chain Sector | Technology Cluster | 2015 | 2016 | 2017 | 2018 | 2019 | 2020 | Total | 2015–2020 CAGR |
---|---|---|---|---|---|---|---|---|---|
Bigdata | Omics (CLS 1) | 38.1 | 43.9 | 54.9 | 58.3 | 67.8 | 79.6 | 342.7 | 15.9% |
Smart-health (CLS 4) | 21.4 | 28.6 | 51.0 | 71.3 | 57.6 | 55.9 | 285.7 | 21.2% | |
Cohort (CLS 7) | 14.0 | 21.5 | 29.3 | 53.1 | 68.5 | 64.6 | 251.0 | 35.8% | |
73.5 | 94.0 | 135.2 | 182.7 | 193.9 | 200.1 | 879.4 | 22.2% | ||
Empirical | Clinical Information (CLS 2) | 10.2 | 17.5 | 34.2 | 51.0 | 43.7 | 35.5 | 192.2 | 28.3% |
Drug (CLS 5) | 8.4 | 14.6 | 20.5 | 21.0 | 19.8 | 14.1 | 98.4 | 11.1% | |
Prediction (CLS 8) | 6.3 | 11.1 | 13.3 | 19.1 | 17.1 | 20.1 | 87.0 | 26.2% | |
Therapies (CLS 6) | 11.8 | 15.1 | 14.2 | 15.9 | 11.4 | 9.6 | 78.0 | −4.1% | |
36.7 | 58.2 | 82.2 | 107.0 | 92.0 | 79.4 | 455.5 | 16.7% | ||
Service | Services (CLS 3) | 4.6 | 8.2 | 11.9 | 16.5 | 16.4 | 15.9 | 73.6 | 28.2% |
Total Sum (Unit: USD million) | 114.8 | 160.4 | 229.3 | 306.2 | 302.3 | 295.5 | 1408.5 | 20.8% |
(Unit: USD Million) | Bigdata | Empirical | Service | TOTAL | |||||
---|---|---|---|---|---|---|---|---|---|
Omics (CLS 1) | Smart-Health (CLS 4) | Cohort (CLS 7) | Clinical Information (CLS 2) | Drug (CLS 5) | Prediction (CLS 8) | Therapies (CLS 6) | Service (CLS 3) | ||
Gangwon-do | 7.7 | 7.9 | 0.9 | 2.2 | 1.5 | 3.1 | 1.4 | 7.5 | 32.1 |
Gyeonggi-do | 60.3 | 52.4 | 27.7 | 14.7 | 20.9 | 15.1 | 1.7 | 17.3 | 210.1 |
Gyeongsangnam-do | 2.1 | 2.3 | 2.4 | 1.7 | 1.6 | 2.5 | 3.2 | 1.6 | 17.3 |
Gyeongsangbuk-do | 1.5 | 12.6 | 0.2 | 2.3 | 0.7 | 0.5 | 1.9 | 0.1 | 19.7 |
Gwangju | 5.0 | 2.2 | 7.7 | 1.9 | 2.2 | 3.1 | 0.6 | - | 22.8 |
Daegu | 6.3 | 12.9 | 7.5 | 22.5 | 2.7 | 0.6 | 13.0 | 1.6 | 67.1 |
Daejeon | 36.5 | 37.1 | 25.7 | 45.8 | 7.8 | 10.7 | 1.5 | 3.6 | 168.7 |
Busan | 3.9 | 7.6 | 2.3 | 7.4 | 0.5 | 0.5 | 0.2 | 0.6 | 22.9 |
Seoul | 158.1 | 122.4 | 104.3 | 72.5 | 50.4 | 44.3 | 51.3 | 30.9 | 634.1 |
Sejong | - | - | 0.3 | - | 0.4 | 0.5 | - | - | 1.2 |
Ulsan | 9.1 | 13.1 | 20.2 | 15.6 | 5.2 | 1.3 | 0.0 | 1.8 | 66.4 |
Incheon | 1.0 | 7.2 | 4.0 | 1.9 | 0.7 | 0.3 | 1.6 | 0.1 | 16.8 |
Jeollanam-do | 2.1 | 0.0 | 0.0 | - | - | - | 0.1 | - | 2.3 |
Jeollabuk-do | 0.1 | 4.7 | 9.0 | 0.1 | 2.0 | - | - | 0.3 | 16.2 |
Jeju | 0.3 | - | - | 0.2 | 0.7 | - | - | - | 1.2 |
Chungcheongnam-do | 2.3 | 2.4 | 0.7 | 1.4 | 0.3 | 0.1 | 1.3 | 3.4 | 11.9 |
Chungcheongbuk-do | 46.4 | 0.9 | 38.2 | 2.0 | 0.8 | 4.4 | 0.2 | 4.9 | 97.7 |
Total | 342.7 | 285.7 | 251.0 | 192.2 | 98.4 | 87.0 | 78.0 | 73.6 | 1408.5 |
(Unit: USD Thousand) | Organization | Gangwon-do | Gyeonggi-do | Gyeongsangnam-do | Gyeongsangbuk-do | Gwangju | Daegu | Daejeon | Busan | Seoul | Sejong | Ulsan | Incheon | Jeollanam-do | Jeollabuk-do | Jeju | Chungcheongnam-do | Chungcheongbuk-do |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Omics (CLS 1) | Industry | - | 7299 | - | - | - | 125 | 2435 | 1375 | 23,593 | - | 250 | 528 | - | 56 | - | - | - |
University | 7676 | 14,779 | 1974 | 1518 | 4178 | 3440 | 10,197 | 2490 | 92,853 | - | 8874 | 225 | 1871 | - | 250 | 2269 | 771 | |
Hospital | - | 498 | 167 | - | 807 | - | - | - | 18,566 | - | - | 289 | 214 | - | - | - | - | |
Institute | - | 37,323 | - | - | - | 2758 | 23,879 | - | 22,943 | - | - | - | - | - | - | - | 15,655 | |
Agency | - | 393 | - | - | - | - | - | - | 144 | - | - | - | - | - | - | - | 29,990 | |
Smart-health (CLS 4) | Industry | 6047 | 30,032 | 1131 | 2915 | 825 | 5475 | 4125 | 3262 | 37,877 | - | 1164 | 1301 | - | 836 | - | 442 | 283 |
University | 1900 | 12,835 | - | 2292 | 613 | 6961 | 6360 | 1475 | 40,137 | - | 11,965 | 308 | 42 | 3799 | - | 1191 | 25 | |
Hospital | - | 3859 | 1181 | - | - | - | 21 | - | 9467 | - | - | 5499 | - | 58 | - | 83 | - | |
Institute | - | 5654 | - | 7148 | 765 | 58 | 26,598 | - | 29,638 | - | - | 83 | - | - | - | 656 | - | |
Agency | - | 54 | - | 231 | - | 404 | - | 2863 | 5244 | - | - | - | - | - | - | - | 559 | |
Cohort (CLS 7) | Industry | 108 | 2146 | 1000 | 148 | - | - | 3201 | 1083 | 28,390 | - | - | - | - | 4 | - | - | 1717 |
University | 747 | 12,578 | 242 | 65 | 6723 | 3555 | 2052 | 920 | 55,083 | 250 | 20,186 | 1660 | - | 7588 | - | 723 | 1792 | |
Hospital | - | 4994 | 1136 | - | 941 | 1422 | 67 | 334 | 16,301 | 42 | - | 2332 | 27 | 1386 | - | - | 417 | |
Institute | - | 7012 | - | - | - | 1203 | 20,417 | - | 2833 | - | - | - | - | - | - | - | - | |
Agency | - | 929 | - | - | - | 1271 | - | - | 1686 | - | - | - | - | - | - | - | 34,318 | |
Clinical Information (CLS 2) | Industry | 375 | 2563 | - | 148 | - | - | 1104 | 7275 | 12,925 | - | - | - | - | 141 | - | - | - |
University | 1439 | 4861 | 1435 | 2105 | 1535 | 8724 | 12,762 | 124 | 43,613 | - | 15,632 | 1554 | - | - | 245 | 1431 | 192 | |
Hospital | 376 | 1388 | 252 | - | 388 | 696 | - | - | 10,117 | - | - | 343 | - | - | - | - | - | |
Institute | - | 5908 | - | - | - | 11,485 | 18,473 | - | 5022 | - | - | - | - | - | - | - | - | |
Agency | - | - | - | - | - | 1567 | 13,447 | - | 777 | - | - | - | - | - | - | - | 1770 | |
Drug (CLS 5) | Industry | 1499 | 6599 | - | 650 | - | 417 | - | 100 | 2767 | 417 | - | 73 | - | - | 704 | - | 125 |
University | - | 2785 | - | - | 613 | 2300 | 297 | 360 | 17,710 | - | 5233 | 592 | - | 2014 | - | 292 | - | |
Hospital | - | 167 | - | - | 1619 | - | 1200 | - | 12,538 | - | - | - | - | - | - | - | - | |
Institute | - | 4704 | - | - | - | - | 6276 | - | 6532 | - | - | - | - | - | - | - | - | |
Agency | - | 6685 | 1568 | - | - | - | - | - | 10,859 | - | - | - | - | - | - | - | 662 | |
Prediction (CLS 8) | Industry | 2408 | 10,452 | - | 441 | 446 | - | 1904 | 228 | 14,521 | 417 | - | 292 | - | - | - | 117 | - |
University | 667 | 4287 | 2190 | 33 | 2071 | 217 | 4002 | 273 | 15,361 | 83 | 1310 | - | - | - | - | - | 3600 | |
Hospital | - | - | 104 | - | 578 | - | 21 | - | 10,129 | - | - | - | - | - | - | - | - | |
Institute | - | 358 | - | - | - | 417 | 4763 | - | 4300 | - | - | - | - | - | - | - | - | |
Agency | - | - | 167 | 21 | 42 | - | - | - | - | - | - | - | - | - | - | - | 783 | |
Therapies (CLS 6) | Industry | - | 96 | - | - | - | 167 | 1000 | - | 14,622 | - | - | - | - | - | - | 56 | 54 |
University | 1367 | 1189 | 3167 | 1931 | 284 | 12,848 | 483 | 167 | 23,437 | - | 12 | - | - | - | - | 675 | - | |
Hospital | - | 204 | - | - | 353 | - | - | - | 1642 | - | - | 1614 | 103 | - | - | - | 117 | |
Institute | - | 248 | - | - | - | - | - | - | 11,617 | - | - | - | - | - | - | 533 | - | |
Agency | - | - | - | - | - | - | - | - | - | - | - | - | - | - | - | - | - | |
(Service (CLS 3) | Industry | 7360 | 9054 | - | - | - | - | 390 | - | 6851 | - | - | - | - | - | - | 392 | 1906 |
University | 160 | 1257 | 1573 | 75 | - | 1025 | 104 | 558 | 10,634 | - | 1762 | 117 | - | 270 | - | 3049 | 433 | |
Hospital | - | 206 | - | - | - | - | - | - | 933 | - | - | 17 | - | - | - | - | 81 | |
Institute | - | 5365 | - | - | - | - | 3115 | - | 7523 | - | - | - | - | - | - | - | - | |
Agency | 17 | 1379 | - | - | - | 555 | - | - | 4958 | - | - | - | - | - | - | - | 2437 | |
TOTAL | Industry | 17,797 | 68,242 | 2131 | 4302 | 1271 | 6183 | 14,158 | 13,322 | 141,547 | 833 | 1414 | 2193 | - | 1037 | 704 | 1006 | 4085 |
University | 13,955 | 54,571 | 10,579 | 8020 | 16,017 | 39,069 | 36,257 | 6368 | 298,828 | 333 | 64,974 | 4455 | 1913 | 13,671 | 495 | 9629 | 6813 | |
Hospital | 376 | 11,315 | 2840 | - | 4685 | 2117 | 1308 | 334 | 79,691 | 42 | - | 10,093 | 344 | 1445 | - | 83 | 615 | |
Institute | - | 66,571 | - | 7148 | 765 | 15,921 | 103,521 | - | 90,408 | - | - | 83 | - | - | - | 1190 | 15,655 | |
Agency | 17 | 9440 | 1735 | 252 | 42 | 3797 | 13,447 | 2863 | 23,669 | - | - | - | - | - | - | - | 70,519 |
Target Disease | Type of Organization | Organization | R&D Title | Project Manager | Region | Funding (USD Thousand) |
---|---|---|---|---|---|---|
Cancer | Institute | National Cancer Center | Prognostic impact of CT-determined sarcopenia and sarcopenic obesity in older patients with non-small cell lung cancer undergoing chemotherapy | Yoon-jung Jang | Gyeonggi-do | 596 |
University | Yonsei University | Development of an app-based self-management program “HARU” for cancer patients and testing its effectiveness | Kyungmi Jung | Seoul | 11 | |
University | Seoul National University | Evaluation of risk for oral diseases in cancer patients in Korea and the National Health Insurance coverage extension | Seo-kyung Han | Seoul | 75 | |
University | Yonsei University | Development of prospective cohort and evidence-based management program for colorectal cancer survivors | Seon-ha Ji | Seoul | 55 | |
Institute | Broad Institute Inc. | Making cancer precision medicine real bottlenecks and opportunities | Todd R. Golub | Cambridge, MA, USA | 1024 | |
University | Royal College of Surgeons in Ireland | Advancing a precision medicine paradigm in metastatic colorectal cancer systems-based patient stratification solutions | Annette Byrne PhD | Dublin, Ireland | 6794 | |
University | Queen Mary University of London | Optimal screening and surveillance regimes for early diagnosis of cancer and precision medicine using mathematical modelling | Kit Curtius | London, UK | 370 | |
University | Keio University | Establishment of small cell lung cancer organoids for development of precision medicine | Mitsuishi Akifumi | Tokyo, Japan | 37 | |
Brain disease | Hospital | Samsung Medical Center | Protocol development and validation of personalized CNS-PNS hybrid rehabilitation therapy for restoration of gait-related neural network in stroke Patients | Yeon-hee Kim | Seoul | 155 |
Hospital | Seoul National University Hospital | Modeling of prognosis prediction for stroke using big data | Byung-Woo Yoon | Seoul | 108 | |
Institute | Korea Institute of Science and Technology | Development of customized rehabilitation technology for stroke patients in neural plasticity evaluation and enhancement | In-chan Yoon | Seoul | 1083 | |
University | Pusan National University | Effect of digital treatment system on upper limb functional recovery and brain plasticity in stroke patients | Yong-il Shin | Busan | 83 | |
University | Gachon University | Development of biomarker monitoring system for verification of Korean medicine treatment towards stroke | Young-jun Kim | Gyeonggi | 183 | |
University | Ohio State University | Laying the groundwork for personalized medicine in aphasia therapy genetic and cognitive predictors of restorative treatment response | Stacy M. Harnish | Columbus, Ohio, USA | 487 | |
University | Charité-Universitätsmedizin Berlin | Personalised medicine by predictive modeling in stroke for better quality of life | Dietmar Frey | Berlin, Germany | 6773 | |
University | King’s College London | Towards personalised medicine in psychiatric genetics the role of cardiometabolic traits in severe mental illness | Saskia Hagenaars | London, UK | 409 | |
University | Hamamatsu University School of Medicine | Precision medicine in developmental psychiatry | Kenji J. Tsuchiya | Shizuoka, Japan | 159 | |
Chronic disease | Industry | M2IT | Intelligent diagnosis prescription inquiry service using CDM-based chronic disease data | Wooseop Shin | Seoul | 417 |
Agency | Korea Disease Control and Prevention Agency | Women’s health research for prevention and management of non-communicable diseases | Hyun-young Park | Chungcheongbuk-do | 278 | |
Industry | Wisenut | Development of an interactive medical history taking software based on lifelog data for chronic disease patients | Wooyoung Kwon | Gyeonggi | 833 | |
Industry | Medical Excellence | System advancement and development for chronic disease monitoring and education in primary clinics | Yoon-hee Choi | Seoul | 292 | |
Hospital | Samsung Medical Center | Advancement and demonstration of a primary care-based chronic disease monitoring service model | Jaeheon Kang | Seoul | 208 | |
University | Catholic University of Korea | Development of advanced system linkage service model for the optimal patient care of chronic diseases in primary clinics | Gun-ho Yoon | Seoul | 125 | |
University | University of Washington | Central hub for kidney precision medicine | Jonathan Himmelfarb | Seattle, WA, USA | 4286 | |
University | Academisch Ziekenhuis Groningen | Personalised medicine in diabetic chronic disease management | Hiddo J. L. Heerspink | Groningen, Netherlands | 3794 | |
University | University College London | MICA: Medical Bioinformatics: Data-driven discovery for personalised medicine | Peter Coveney | London, UK | 11,685 | |
University | The University of Tokyo | Development of a diagnostic algorithm through gene panel testing and genetic risk score analysis to facilitate precision medicine for diabetes | Hosoe Jun | Tokyo, Japan | 35 |
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Lee, D.; Kim, K. Public R&D Projects-Based Investment and Collaboration Framework for an Overarching South Korean National Strategy of Personalized Medicine. Int. J. Environ. Res. Public Health 2022, 19, 1291. https://doi.org/10.3390/ijerph19031291
Lee D, Kim K. Public R&D Projects-Based Investment and Collaboration Framework for an Overarching South Korean National Strategy of Personalized Medicine. International Journal of Environmental Research and Public Health. 2022; 19(3):1291. https://doi.org/10.3390/ijerph19031291
Chicago/Turabian StyleLee, Doyeon, and Keunhwan Kim. 2022. "Public R&D Projects-Based Investment and Collaboration Framework for an Overarching South Korean National Strategy of Personalized Medicine" International Journal of Environmental Research and Public Health 19, no. 3: 1291. https://doi.org/10.3390/ijerph19031291
APA StyleLee, D., & Kim, K. (2022). Public R&D Projects-Based Investment and Collaboration Framework for an Overarching South Korean National Strategy of Personalized Medicine. International Journal of Environmental Research and Public Health, 19(3), 1291. https://doi.org/10.3390/ijerph19031291