Case Report Open Access December 27, 2021

Advancing Healthcare Innovation in 2021: Integrating AI, Digital Health Technologies, and Precision Medicine for Improved Patient Outcomes

1
Senior Software Engineer, Knipper Princeton, Atlanta, GA, USA
2
Validation Engineer, Sarepta Therapeutics, Manchester, NH, USA
3
Sr Integration Developer, Natera Inc, Austin, USA
4
Oracle EBS Onsite Lead, Biogen, Durham, NC, USA
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APA Style
Chava, K. , Chava, K. Chakilam, C. , Chakilam, C. Suura, S. R. , & Suura, S. R. (2019). Advancing Healthcare Innovation in 2021: Integrating AI, Digital Health Technologies, and Precision Medicine for Improved Patient Outcomes. Current Research in Public Health, 1(1), 29-41. https://doi.org/10.31586/gjmcr.2021.1294
ACS Style
Chava, K. ; Chava, K. Chakilam, C. ; Chakilam, C. Suura, S. R. ; Suura, S. R. Advancing Healthcare Innovation in 2021: Integrating AI, Digital Health Technologies, and Precision Medicine for Improved Patient Outcomes. Current Research in Public Health 2019 1(1), 29-41. https://doi.org/10.31586/gjmcr.2021.1294
Chicago/Turabian Style
Chava, Karthik, Karthik Chava. Chaitran Chakilam, Chaitran Chakilam. Sambasiva Rao Suura, and Sambasiva Rao Suura. 2019. "Advancing Healthcare Innovation in 2021: Integrating AI, Digital Health Technologies, and Precision Medicine for Improved Patient Outcomes". Current Research in Public Health 1, no. 1: 29-41. https://doi.org/10.31586/gjmcr.2021.1294
AMA Style
Chava K, Chava KChakilam C, Chakilam CSuura SR, Suura SR. Advancing Healthcare Innovation in 2021: Integrating AI, Digital Health Technologies, and Precision Medicine for Improved Patient Outcomes. Current Research in Public Health. 2019; 1(1):29-41. https://doi.org/10.31586/gjmcr.2021.1294
@Article{crph1294,
AUTHOR = {Chava, Karthik and Chakilam, Chaitran and Suura, Sambasiva Rao and Recharla, Mahesh},
TITLE = {Advancing Healthcare Innovation in 2021: Integrating AI, Digital Health Technologies, and Precision Medicine for Improved Patient Outcomes},
JOURNAL = {Current Research in Public Health},
VOLUME = {1},
YEAR = {2019},
NUMBER = {1},
PAGES = {29-41},
URL = {https://www.scipublications.com/journal/index.php/GJMCR/article/view/1294},
ISSN = {2831-5162},
DOI = {10.31586/gjmcr.2021.1294},
ABSTRACT = {Advances of wearables, sensors, smart devices, and electronic health records have generated patient-oriented longitudinal data sources that are analyzed with advanced analytical tools to generate enormous opportunities to understand patient health conditions and needs, transforming healthcare significantly from conventional paradigms to more patient-specific and preventive approaches. Artificial intelligence (AI) with a machine learning methodology is prominently considered as it is uniquely suitable to derive predictions and recommendations from complex patient datasets. Recent studies have shown that precise data aggregation methods exhibit an important role in the precision and reliability of clinical outcome distribution models. There is an essential need to develop an effective and powerful multifunctional machine learning platform to enable healthcare professionals to comprehend challenging biomedical multifactorial datasets to understand patient-specific scenarios and to make better clinical decisions, potentially leading to the optimist patient outcomes. There is a substantial drive to develop the networking and interoperability of clinical systems, the laboratory, and public health. These steps are delivered in concert with efforts at enabling usefully analytic tools and technologies for making sense of the eruption of overall patient’s information from various sources. However, the full efficiency of this technology can only be eliminated when ethical, legal, and social challenges related to reducing the privacy of healthcare information are successfully absorbed. Public and media are to be informed about the capabilities and limitations of the technologies and the paramount to be balanced is juvenile public healthcare data privacy debate. While this is ongoing, the measures have been progressed from patient data protection abuses for progress to realize the full potential of AI technology for hosting the health system, with benefits for all stakeholders. Any protection program should be based on fairness, transparency, and a full commitment to data privacy. On-going innovative systems that use AI to manage clinical data and analyzes are proposed. These tools can be used by healthcare providers, especially in defining specific scenarios related to biomedical data management and analysis. These platforms ensure that the significant and potentially predictive parameters associated with the diagnosis, treatment, and progression of the disease have been recognized. With the systematic use of these solutions, this work can contribute to the realization of noticeable improvements in the provision of real-time, personalized, and efficient medicine at a reduced cost [1].},
}
%0 Journal Article
%A Chava, Karthik
%A Chakilam, Chaitran
%A Suura, Sambasiva Rao
%A Recharla, Mahesh
%D 2019
%J Current Research in Public Health

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%M doi:10.31586/gjmcr.2021.1294
%U https://www.scipublications.com/journal/index.php/GJMCR/article/view/1294
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AU  - Chava, Karthik
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AU  - Recharla, Mahesh
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AB  - Advances of wearables, sensors, smart devices, and electronic health records have generated patient-oriented longitudinal data sources that are analyzed with advanced analytical tools to generate enormous opportunities to understand patient health conditions and needs, transforming healthcare significantly from conventional paradigms to more patient-specific and preventive approaches. Artificial intelligence (AI) with a machine learning methodology is prominently considered as it is uniquely suitable to derive predictions and recommendations from complex patient datasets. Recent studies have shown that precise data aggregation methods exhibit an important role in the precision and reliability of clinical outcome distribution models. There is an essential need to develop an effective and powerful multifunctional machine learning platform to enable healthcare professionals to comprehend challenging biomedical multifactorial datasets to understand patient-specific scenarios and to make better clinical decisions, potentially leading to the optimist patient outcomes. There is a substantial drive to develop the networking and interoperability of clinical systems, the laboratory, and public health. These steps are delivered in concert with efforts at enabling usefully analytic tools and technologies for making sense of the eruption of overall patient’s information from various sources. However, the full efficiency of this technology can only be eliminated when ethical, legal, and social challenges related to reducing the privacy of healthcare information are successfully absorbed. Public and media are to be informed about the capabilities and limitations of the technologies and the paramount to be balanced is juvenile public healthcare data privacy debate. While this is ongoing, the measures have been progressed from patient data protection abuses for progress to realize the full potential of AI technology for hosting the health system, with benefits for all stakeholders. Any protection program should be based on fairness, transparency, and a full commitment to data privacy. On-going innovative systems that use AI to manage clinical data and analyzes are proposed. These tools can be used by healthcare providers, especially in defining specific scenarios related to biomedical data management and analysis. These platforms ensure that the significant and potentially predictive parameters associated with the diagnosis, treatment, and progression of the disease have been recognized. With the systematic use of these solutions, this work can contribute to the realization of noticeable improvements in the provision of real-time, personalized, and efficient medicine at a reduced cost [1].
DO  - Advancing Healthcare Innovation in 2021: Integrating AI, Digital Health Technologies, and Precision Medicine for Improved Patient Outcomes
TI  - 10.31586/gjmcr.2021.1294
ER  -