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Dr. Gary Miner received a B.S. from Hamline University, St. Paul, MN, with biology, chemistry, and education majors; an M.S. in zoology and population genetics from the University of Wyoming; and a Ph.D. in biochemical genetics from the University of Kansas as the recipient of a NASA pre-doctoral fellowship. He pursued additional National Institutes of Health postdoctoral studies at the U of Minnesota and U of Iowa eventually becoming immersed in the study of affective disorders and Alzheimer's disease.
In 1985, he and his wife, Dr. Linda Winters-Miner, founded the Familial Alzheimer's Disease Research Foundation, which became a leading force in organizing both local and international scientific meetings, bringing together all the leaders in the field of genetics of Alzheimer's from several countries, resulting in the first major book on the genetics of Alzheimer's disease. In the mid-1990s, Dr. Miner turned his data analysis interests to the business world, joining the team at StatSoft and deciding to specialize in data mining. He started developing what eventually became the Handbook of Statistical Analysis and Data Mining Applications (co-authored with Drs. Robert A. Nisbet and John Elder), which received the 2009 American Publishers Award for Professional and Scholarly Excellence (PROSE). Their follow-up collaboration, Practical Text Mining and Statistical Analysis for Non-structured Text Data Applications, also received a PROSE award in February of 2013. Gary was also co-author of "Practical Predictive Analytics and Decisioning Systems for Medicine (Academic Press, 2015). Overall, Dr. Miner's career has focused on medicine and health issues, and the use of data analytics (statistics and predictive analytics) in analyzing medical data to decipher fact from fiction.
Gary has also served as Merit Reviewer for PCORI (Patient Centered Outcomes Research Institute) that awards grants for predictive analytics research into the comparative effectiveness and heterogeneous treatment effects of medical interventions including drugs among different genetic groups of patients; additionally he teaches on-line classes in 'Introduction to Predictive Analytics', 'Text Analytics', 'Risk Analytics', and 'Healthcare Predictive Analytics' for the University of California-Irvine. Recently, until 'official retirement' 18 months ago, he spent most of his time in his primary role as Senior Analyst-Healthcare Applications Specialist for Dell | Information Management Group, Dell Software (through Dell's acquisition of StatSoft (www.StatSoft.com) in April 2014). Currently Gary is working on two new short popular books on 'Healthcare Solutions for the USA' and 'Patient-Doctor Genomics Stories'.
Part I: Historical Perspective and the Issues of Concern for Health Care Delivery in the 21st Century
1. History of Medical Health Care Delivery & Basic Medical Research
2. "Things That Matter !!!" - Why This Book?
3. Biomedical Informatics
4. Access to Data for Analytics - the 'Biggest Issue' in Medical and Healthcare Predictive Analytics
5. Regulatory Measures - Agencies, and Data Issues in Medicine and Healthcare
6. Personalized Medicine
7. Patient-Directed Healthcare
8. OMICS or MULTIOMICS
9. Challenges and Considerations of AI and Genomics
Part II: Practical Step-by-Step Tutorials and Case Studies
TUTORIAL A Case Study: Imputing Medical Specialty Using Data Mining Models
TUTORIAL AA: VOC for Cancer Detection / Prediction
TUTORIAL B Case Study: Using Association Rules of Investigate Characteristics of Hospital Readmissions TUTORIAL BB Case Study: COVID-19 Descriptive Analysis Around the World
TUTORIAL C Constructing Decision Trees for Medicare Claims Using R and Rattle
TUTORIAL D Predictive and Prescriptive Analytics for Optimal Decisioning: Hospital Readmission Risk Mitigation
TUTORIAL E Obesity Group: Predicting Medicine and Conditions That Achieved the Greatest Weight Loss in a Group of Obese/Morbidly Obese Patients
TUTORIAL F1 Obesity Individual: Predicting Best Treatment or an Individual from Portal Data at a Clinic
TUTORIAL F2 Obesity Individual: Automatic Binning of Continuous Variables and WoE to Produce a Better Model than the "Hand Binned" Stepwise Regression Model
TUTORIAL G Resiliency Study for First- and Second-Year Medical Residents
TUTORIAL H Medicare Enrollment Analysis Using Visual Data Mining
TUTORIAL I Case Study: Detection of Stress-Induced Ischemia in Patients with Chest Pain "Rule-Out ACS" Protocol
TUTORIAL J1 Predicting Survival or Mortality for Patients with Disseminated Intravascular Coagulation and/or Critical illnesses
TUTORIAL J2 Decisioning for DIC
TUTORIAL K Predicting Allergy Symptoms
TUTORIAL L Exploring Discrete Database Networks of TriCare Health Data Using R and Shiny
TUTORIAL M Schistosomiasis Data from WHO
TUTORIAL N The Poland Medical Bundle
TUTORIAL O Medical Advice Acceptance Prediction
TUTORIAL P Using Neural Network Analysis to Assist in Classifying Neuropsychological Data
TUTORIAL Q Developing Interactive Decision Trees using Inpatient Claims (with SAS Enterprise Miner)
TUTORIAL R Divining Healthcare Charges for Optimal Health Benefits Under the Affordable Care Act
TUTORIAL S Availability of Hospital Beds for Newly Admitted Patients: The Impact of Environmental Services on Hospital Throughput
TUTORIAL T Predicting Vascular Thrombosis: Comparing Predictive Analytic Models and Building an Ensemble Model for "Best Prediction"
TUTORIAL U Predicting Breast Cancer Diagnosis Using Support Vector Machines
TUTORIAL V Heart Disease: Evaluating Variables That Might Have an Effect on Cholesterol Level (Using Recode of Variables Function) TUTORIAL W Blood Pressure Predictive Factors
TUTORIAL X Gene Search and the Related Risk Estimates: A Statistical Analysis of Prostate Cancer Data
TUTORIAL Y Ovarian Cancer Prediction via Proteomic Mass Spectrometry
TUTORIAL Z Influence of Stent Vendor Representatives in the Catheterization Lab
Part III: Practical Solutions and Advanced Topics in Administration and Delivery of Health Care Including Practical Predictive Analytics for Medicine
1. Challenges for Healthcare Administration and Delivery: Integrating Predictive and Prescriptive Modeling into Personalized Health Care
2. Challenges of Medical Research for the Remainder of the 21st Century
3. Introduction to the Cornerstone Chapters of this Book, Chapters 12 -15: The "Three Processes": Quality Control, Predictive Analytics, and Decisioning
4. The Nature of Insight from Data and Implications for Automated Decisioning: Predictive and Prescriptive Models, Decisions, and Actions
5. Decisioning Systems (Platforms) Coupled with Predictive Analytics in a Real Hospital Setting - A Model for the World
6. The Latest in Predictive and Prescriptive Analytics
7. The Coming Standard for a Data Model - OMOP (Observational Medical Outcomes Partnership) as per Observational Health Data Sciences and Informatics (OHDS) at University of California-Irvine
8. A Real Case Study of GLAUCOMA (eye disease) and suggested PREDICTIVE MODELING for identifying individual patient predictions of best treatment with high accuracy
9. Analytics Architectures for the 21st Century
10. Causation and How This 'Cutting Edge Concept' Works with Predictive Analytics and Prescriptive Analytics (Decisioning)
11. 21st Century Healthcare and Wellness: Getting the Health Care Delivery System That Meets Global Needs
Dr. Gary Miner received a B.S. from Hamline University, St. Paul, MN, with biology, chemistry, and education majors; an M.S. in zoology and population genetics from the University of Wyoming; and a Ph.D. in biochemical genetics from the University of Kansas as the recipient of a NASA pre-doctoral fellowship. He pursued additional National Institutes of Health postdoctoral studies at the U of Minnesota and U of Iowa eventually becoming immersed in the study of affective disorders and Alzheimer's disease.
In 1985, he and his wife, Dr. Linda Winters-Miner, founded the Familial Alzheimer's Disease Research Foundation, which became a leading force in organizing both local and international scientific meetings, bringing together all the leaders in the field of genetics of Alzheimer's from several countries, resulting in the first major book on the genetics of Alzheimer's disease. In the mid-1990s, Dr. Miner turned his data analysis interests to the business world, joining the team at StatSoft and deciding to specialize in data mining. He started developing what eventually became the Handbook of Statistical Analysis and Data Mining Applications (co-authored with Drs. Robert A. Nisbet and John Elder), which received the 2009 American Publishers Award for Professional and Scholarly Excellence (PROSE). Their follow-up collaboration, Practical Text Mining and Statistical Analysis for Non-structured Text Data Applications, also received a PROSE award in February of 2013. Gary was also co-author of "Practical Predictive Analytics and Decisioning Systems for Medicine (Academic Press, 2015). Overall, Dr. Miner's career has focused on medicine and health issues, and the use of data analytics (statistics and predictive analytics) in analyzing medical data to decipher fact from fiction.
Gary has also served as Merit Reviewer for PCORI (Patient Centered Outcomes Research Institute) that awards grants for predictive analytics research into the comparative effectiveness and heterogeneous treatment effects of medical interventions including drugs among different genetic groups of patients; additionally he teaches on-line classes in 'Introduction to Predictive Analytics', 'Text Analytics', 'Risk Analytics', and 'Healthcare Predictive Analytics' for the University of California-Irvine. Recently, until 'official retirement' 18 months ago, he spent most of his time in his primary role as Senior Analyst-Healthcare Applications Specialist for Dell | Information Management Group, Dell Software (through Dell's acquisition of StatSoft (www.StatSoft.com) in April 2014). Currently Gary is working on two new short popular books on 'Healthcare Solutions for the USA' and 'Patient-Doctor Genomics Stories'.
Part I: Historical Perspective and the Issues of Concern for Health Care Delivery in the 21st Century
1. History of Medical Health Care Delivery & Basic Medical Research
2. "Things That Matter !!!" - Why This Book?
3. Biomedical Informatics
4. Access to Data for Analytics - the 'Biggest Issue' in Medical and Healthcare Predictive Analytics
5. Regulatory Measures - Agencies, and Data Issues in Medicine and Healthcare
6. Personalized Medicine
7. Patient-Directed Healthcare
8. OMICS or MULTIOMICS
9. Challenges and Considerations of AI and Genomics
Part II: Practical Step-by-Step Tutorials and Case Studies
TUTORIAL A Case Study: Imputing Medical Specialty Using Data Mining Models
TUTORIAL AA: VOC for Cancer Detection / Prediction
TUTORIAL B Case Study: Using Association Rules of Investigate Characteristics of Hospital Readmissions TUTORIAL BB Case Study: COVID-19 Descriptive Analysis Around the World
TUTORIAL C Constructing Decision Trees for Medicare Claims Using R and Rattle
TUTORIAL D Predictive and Prescriptive Analytics for Optimal Decisioning: Hospital Readmission Risk Mitigation
TUTORIAL E Obesity Group: Predicting Medicine and Conditions That Achieved the Greatest Weight Loss in a Group of Obese/Morbidly Obese Patients
TUTORIAL F1 Obesity Individual: Predicting Best Treatment or an Individual from Portal Data at a Clinic
TUTORIAL F2 Obesity Individual: Automatic Binning of Continuous Variables and WoE to Produce a Better Model than the "Hand Binned" Stepwise Regression Model
TUTORIAL G Resiliency Study for First- and Second-Year Medical Residents
TUTORIAL H Medicare Enrollment Analysis Using Visual Data Mining
TUTORIAL I Case Study: Detection of Stress-Induced Ischemia in Patients with Chest Pain "Rule-Out ACS" Protocol
TUTORIAL J1 Predicting Survival or Mortality for Patients with Disseminated Intravascular Coagulation and/or Critical illnesses
TUTORIAL J2 Decisioning for DIC
TUTORIAL K Predicting Allergy Symptoms
TUTORIAL L Exploring Discrete Database Networks of TriCare Health Data Using R and Shiny
TUTORIAL M Schistosomiasis Data from WHO
TUTORIAL N The Poland Medical Bundle
TUTORIAL O Medical Advice Acceptance Prediction
TUTORIAL P Using Neural Network Analysis to Assist in Classifying Neuropsychological Data
TUTORIAL Q Developing Interactive Decision Trees using Inpatient Claims (with SAS Enterprise Miner)
TUTORIAL R Divining Healthcare Charges for Optimal Health Benefits Under the Affordable Care Act
TUTORIAL S Availability of Hospital Beds for Newly Admitted Patients: The Impact of Environmental Services on Hospital Throughput
TUTORIAL T Predicting Vascular Thrombosis: Comparing Predictive Analytic Models and Building an Ensemble Model for "Best Prediction"
TUTORIAL U Predicting Breast Cancer Diagnosis Using Support Vector Machines
TUTORIAL V Heart Disease: Evaluating Variables That Might Have an Effect on Cholesterol Level (Using Recode of Variables Function) TUTORIAL W Blood Pressure Predictive Factors
TUTORIAL X Gene Search and the Related Risk Estimates: A Statistical Analysis of Prostate Cancer Data
TUTORIAL Y Ovarian Cancer Prediction via Proteomic Mass Spectrometry
TUTORIAL Z Influence of Stent Vendor Representatives in the Catheterization Lab
Part III: Practical Solutions and Advanced Topics in Administration and Delivery of Health Care Including Practical Predictive Analytics for Medicine
1. Challenges for Healthcare Administration and Delivery: Integrating Predictive and Prescriptive Modeling into Personalized Health Care
2. Challenges of Medical Research for the Remainder of the 21st Century
3. Introduction to the Cornerstone Chapters of this Book, Chapters 12 -15: The "Three Processes": Quality Control, Predictive Analytics, and Decisioning
4. The Nature of Insight from Data and Implications for Automated Decisioning: Predictive and Prescriptive Models, Decisions, and Actions
5. Decisioning Systems (Platforms) Coupled with Predictive Analytics in a Real Hospital Setting - A Model for the World
6. The Latest in Predictive and Prescriptive Analytics
7. The Coming Standard for a Data Model - OMOP (Observational Medical Outcomes Partnership) as per Observational Health Data Sciences and Informatics (OHDS) at University of California-Irvine
8. A Real Case Study of GLAUCOMA (eye disease) and suggested PREDICTIVE MODELING for identifying individual patient predictions of best treatment with high accuracy
9. Analytics Architectures for the 21st Century
10. Causation and How This 'Cutting Edge Concept' Works with Predictive Analytics and Prescriptive Analytics (Decisioning)
11. 21st Century Healthcare and Wellness: Getting the Health Care Delivery System That Meets Global Needs
Part I: Historical Perspective and the Issues of Concern for Health
Care Delivery in the 21st Century
1. History of Medical Health Care Delivery & Basic Medical
Research
2. "Things That Matter !!!" - Why This Book?
3. Biomedical Informatics
4. Access to Data for Analytics – the ‘Biggest Issue’ in Medical
and Healthcare Predictive Analytics
5. Regulatory Measures – Agencies, and Data Issues in Medicine and
Healthcare
6. Personalized Medicine
7. Patient-Directed Healthcare
8. OMICS or MULTIOMICS
9. Challenges and Considerations of AI and Genomics
Part II: Practical Step-by-Step Tutorials and Case Studies
TUTORIAL A Case Study: Imputing Medical Specialty Using Data Mining
Models
TUTORIAL AA: VOC for Cancer Detection / Prediction
TUTORIAL B Case Study: Using Association Rules of Investigate
Characteristics of Hospital Readmissions TUTORIAL BB Case Study:
COVID-19 Descriptive Analysis Around the World
TUTORIAL C Constructing Decision Trees for Medicare Claims Using R
and Rattle
TUTORIAL D Predictive and Prescriptive Analytics for Optimal
Decisioning: Hospital Readmission Risk Mitigation
TUTORIAL E Obesity Group: Predicting Medicine and Conditions That
Achieved the Greatest Weight Loss in a Group of Obese/Morbidly
Obese Patients
TUTORIAL F1 Obesity Individual: Predicting Best Treatment or an
Individual from Portal Data at a Clinic
TUTORIAL F2 Obesity Individual: Automatic Binning of Continuous
Variables and WoE to Produce a Better Model than the "Hand Binned"
Stepwise Regression Model
TUTORIAL G Resiliency Study for First- and Second-Year Medical
Residents
TUTORIAL H Medicare Enrollment Analysis Using Visual Data
Mining
TUTORIAL I Case Study: Detection of Stress-Induced Ischemia in
Patients with Chest Pain "Rule-Out ACS" Protocol
TUTORIAL J1 Predicting Survival or Mortality for Patients with
Disseminated Intravascular Coagulation and/or Critical
illnesses
TUTORIAL J2 Decisioning for DIC
TUTORIAL K Predicting Allergy Symptoms
TUTORIAL L Exploring Discrete Database Networks of TriCare Health
Data Using R and Shiny
TUTORIAL M Schistosomiasis Data from WHO
TUTORIAL N The Poland Medical Bundle
TUTORIAL O Medical Advice Acceptance Prediction
TUTORIAL P Using Neural Network Analysis to Assist in Classifying
Neuropsychological Data
TUTORIAL Q Developing Interactive Decision Trees using Inpatient
Claims (with SAS Enterprise Miner)
TUTORIAL R Divining Healthcare Charges for Optimal Health Benefits
Under the Affordable Care Act
TUTORIAL S Availability of Hospital Beds for Newly Admitted
Patients: The Impact of Environmental Services on Hospital
Throughput
TUTORIAL T Predicting Vascular Thrombosis: Comparing Predictive
Analytic Models and Building an Ensemble Model for "Best
Prediction"
TUTORIAL U Predicting Breast Cancer Diagnosis Using Support Vector
Machines
TUTORIAL V Heart Disease: Evaluating Variables That Might Have an
Effect on Cholesterol Level (Using Recode of Variables Function)
TUTORIAL W Blood Pressure Predictive Factors
TUTORIAL X Gene Search and the Related Risk Estimates: A
Statistical Analysis of Prostate Cancer Data
TUTORIAL Y Ovarian Cancer Prediction via Proteomic Mass
Spectrometry
TUTORIAL Z Influence of Stent Vendor Representatives in the
Catheterization Lab
Part III: Practical Solutions and Advanced Topics in
Administration and Delivery of Health Care Including Practical
Predictive Analytics for Medicine
1. Challenges for Healthcare Administration and Delivery:
Integrating Predictive and Prescriptive Modeling into Personalized
Health Care
2. Challenges of Medical Research for the Remainder of the 21st
Century
3. Introduction to the Cornerstone Chapters of this Book, Chapters
12 -15: The "Three Processes": Quality Control, Predictive
Analytics, and Decisioning
4. The Nature of Insight from Data and Implications for Automated
Decisioning: Predictive and Prescriptive Models, Decisions, and
Actions
5. Decisioning Systems (Platforms) Coupled with Predictive
Analytics in a Real Hospital Setting - A Model for the World
6. The Latest in Predictive and Prescriptive Analytics
7. The Coming Standard for a Data Model – OMOP (Observational
Medical Outcomes Partnership) as per Observational Health Data
Sciences and Informatics (OHDS) at University of
California-Irvine
8. A Real Case Study of GLAUCOMA (eye disease) and suggested
PREDICTIVE MODELING for identifying individual patient predictions
of best treatment with high accuracy
9. Analytics Architectures for the 21st Century
10. Causation and How This ‘Cutting Edge Concept’ Works with
Predictive Analytics and Prescriptive Analytics (Decisioning)
11. 21st Century Healthcare and Wellness: Getting the Health Care
Delivery System That Meets Global Needs
Dr. Gary Miner PhD received a B.S. from Hamline University, St.
Paul, MN, with biology, chemistry, and education majors; an M.S. in
zoology and population genetics from the University of Wyoming; and
a Ph.D. in biochemical genetics from the University of Kansas as
the recipient of a NASA pre-doctoral fellowship. He pursued
additional National Institutes of Health postdoctoral studies at
the U of Minnesota and U of Iowa eventually becoming immersed in
the study of affective disorders and Alzheimer's disease.
In 1985, he and his wife, Dr. Linda Winters-Miner, founded the
Familial Alzheimer's Disease Research Foundation, which became a
leading force in organizing both local and international scientific
meetings, bringing together all the leaders in the field of
genetics of Alzheimer's from several countries, resulting in the
first major book on the genetics of Alzheimer’s disease. In the
mid-1990s, Dr. Miner turned his data analysis interests to the
business world, joining the team at StatSoft and deciding to
specialize in data mining. He started developing what eventually
became the Handbook of Statistical Analysis and Data Mining
Applications (co-authored with Drs. Robert A. Nisbet and John
Elder), which received the 2009 American Publishers Award for
Professional and Scholarly Excellence (PROSE). Their follow-up
collaboration, Practical Text Mining and Statistical Analysis for
Non-structured Text Data Applications, also received a PROSE award
in February of 2013. Gary was also co-author of “Practical
Predictive Analytics and Decisioning Systems for Medicine (Academic
Press, 2015). Overall, Dr. Miner’s career has focused on medicine
and health issues, and the use of data analytics (statistics and
predictive analytics) in analyzing medical data to decipher fact
from fiction.
Gary has also served as Merit Reviewer for PCORI (Patient Centered
Outcomes Research Institute) that awards grants for predictive
analytics research into the comparative effectiveness and
heterogeneous treatment effects of medical interventions including
drugs among different genetic groups of patients; additionally he
teaches on-line classes in ‘Introduction to Predictive Analytics’,
‘Text Analytics’, ‘Risk Analytics’, and ‘Healthcare Predictive
Analytics’ for the University of California-Irvine. Recently, until
‘official retirement’ 18 months ago, he spent most of his time in
his primary role as Senior Analyst-Healthcare Applications
Specialist for Dell | Information Management Group, Dell Software
(through Dell’s acquisition of StatSoft (www.StatSoft.com) in April
2014). Currently Gary is working on two new short popular books on
‘Healthcare Solutions for the USA’ and ‘Patient-Doctor Genomics
Stories’. Linda A. Winters-Miner, PhD, earned her bachelor’s and
master’s degrees at University of Kansas, her doctorate at the
University of Minnesota, and completed post-doctoral studies in
psychiatric epidemiology at the University of Iowa. She spent most
of her career as an educator, in teacher education and statistics
and research design. She spent nearly two years as a site
coordinator for a major (Coxnex) drug trial. For 23 years, she was
a Program Director at Southern Nazarene University - Tulsa. Her
program direction included three undergraduate programs in business
and psychology and three graduate programs in management, business
administration, and health care administration. She has authored or
co-authored numerous articles and books including with Gary and
others, the first book concerning the genetics of Alzheimer's,
Alzheimer's disease: Molecular genetics, Clinical Perspectives and
Promising New Research. L Miner authored some of the tutorials in
the first two predictive analytic books published in 2009 and 2012
by Elsevier. For ten years, she served as a Community Faculty for
Research and Data Analysis at IHI Family Practice Medical Residency
program in Tulsa. She taught predictive analytics online, including
‘healthcare predictive analytics’, for the University of
California-Irvine. At present, Dr. Miner is Professor Emeritus,
Professional and Graduate Studies, Southern Nazarene University and
serves on the Editorial Board, The Journal of Geriatric Psychiatry
and Neurology. Scott Burk PhD is Chief Data Officer at M&M
Predictive Analytics LLC, USA. Dr. Goldstein MD, FAAP attended the
University of Miami’s Honor Program in Medical Education under an
Isaac B. Singer full tuition scholarship, completed his pediatric
residency training at the University of California, Los Angeles,
and finished his Neonatal Perinatal Medicine training at the
University of California, Irvine in 1994. Dr. Goldstein is board
certified in both Pediatrics and Neonatal Perinatal Medicine. He is
an Associate Professor of Pediatrics at Loma Linda University
Children’s Hospital and emeritus medical director of the Neonatal
Intensive Care Unit at Citrus Valley in West Covina, CA. He has
been in clinical practice for 20 years. At the various places he
has worked, Dr. Goldstein has become fluent in a multitude of EMR’s
including EPIC, Cerner, and Meditech. As a member of the Department
Deputies Users Group at Loma Linda University Hospital, Dr.
Goldstein participates in an ongoing EMR improvement process.
Dr. Goldstein is a past president of the Perinatal Advisory
Council, Legislation, Advocacy and Consultation (PACLAC) as well as
a past president of the National Perinatal Association (NPA). Dr.
Goldstein is the twice recipient of the annual Jack Haven Emerson
Award presented to the physician with the most promising study
involving innovative pulmonary research and the 2013 recipient of
the National Perinatal Association Stanley Graven lifetime
achievement award presented for his ongoing commitment to the
advancement of neonatal and perinatal health issues. He is the
editor of PACLAC’s Neonatal Guidelines of Care as well as the
Principal author of both the National Perinatal Association’s 2011
Best Practice Checklist – Oxygen Management for Preterm Infants and
Respiratory Syncytial Virus (RSV) Prophylaxis 2012 Guidelines. Dr.
Goldstein serves on the editorial board of the Journal of
Perinatology as well as Neonatology Today, has represented the NPA
to the American Academy of Pediatrics (AAP) perinatal section, and
is a moderator of NICU-NET, a neonatal listserv. He is an executive
board member and is on the nominations committee for the Section on
Advances in Therapeutics & Technology (SOATT) of the AAP. Dr.
Goldstein chaired the NPA National Conferences in 2004, 2008 and
2011 and continues to be active in conference planning as the CME
Continuing Medical Education (CME) chair for PACLAC.
His research interests include the development of non-invasive
monitoring techniques, evaluation of signal propagation during high
frequency ventilation, and data mining techniques for improving
quality of care. Dr. Goldstein has also been a vocal advocate for
RSV prophylaxis and “right sizing technology for the needs of
neonates. Dr. Goldstein’s recent publications have included
“Critical Complex Congenital Heart Disease (CCHD) which was dual
published in Neonatology Today and Congenital Cardiology Today, the
“Late Preterm Guidelines of Care published in the Journal of
Perinatology, and “How Do We COPE with CPOE published in
Neonatology Today. Bob Nisbet, PhD, is a Data Scientist, currently
modeling precancerous colon polyp presence with clinical data at
the UC-Irvine Medical Center. He has experience in predictive
modeling in Telecommunications, Insurance, Credit, Banking. His
academic experience includes teaching in Ecology and in Data
Science. His industrial experience includes predictive modeling at
AT&T, NCR, and FICO. He has worked also in Insurance, Credit,
membership organizations (e.g. AAA), Education, and Health Care
industries. He retired as an Assistant Vice President of Santa
Barbara Bank & Trust in charge of business intelligence reporting
and customer relationship management (CRM) modeling. Nephi Walton
MD, MS, FACMG, FAMIA earned his MD from the University of Utah
School of Medicine and a Masters degree in Biomedical Informatics
from the University of Utah Department of Biomedical Informatics
where he was a National Library of Medicine fellow. His Masters
work was focused on data mining and predictive analytics of viral
epidemics and their impact on hospitals. He was the winner of the
2009 AMIA Data Mining Competition and has published papers and
co-authored books on data mining and predictive analytics. Also
during his time at the University of Utah he spent several years
studying genetic epidemiology of autoimmune disease and the
application of analytical methods to determining genetic risk for
disease, a work that continues today. His work has included several
interactive medical education products. He founded a company called
Brainspin that continues this work and has won international awards
for innovative design in this area. He is currently a combined
Pediatrics/Genetics fellow at Washington University where he is
pursuing several research interests including the application of
predictive analytics models to genomic data and integration of
genomic data into the medical record. He continues to work with the
University of Utah and Intermountain Healthcare to further his work
in viral prediction models and hospital census prediction and
resource allocation models. Dr. Thomas Hill is Senior Director for
Advanced Analytics (Statistica products) in the TIBCO Analytics
group. He previously held positions as Executive Director for
Analytics at Statistica, within Quest's and at Dell's Information
Management Group. He was a Co-founder and Senior Vice President for
Analytic Solutions for over 20 years at StatSoft Inc. until the
acquisition by Dell in 2014. At StatSoft, he was responsible for
building out Statistica into a leading analytics platform. Dr. Hill
received his Vordiplom in psychology from Kiel University in
Germany, earned an M.S. in industrial psychology and a Ph.D. in
psychology from the University of Kansas. He was on the faculty of
the University of Tulsa from 1984 to 2009, where he conducted
research in cognitive science and taught data analysis and data
mining courses. He has received numerous academic grants and awards
from the National Science Foundation, the National Institute of
Health, the Center for Innovation Management, the Electric Power
Research Institute, and other institutions. Over the past 20 years,
his team has completed diverse consulting projects with companies
from practically all industries in the United States and
internationally on identifying and refining effective data mining
and predictive modeling / analytics solutions for diverse
applications. Dr. Hill has published widely on innovative
applications for data mining and predictive analytics. He is the
author (with Paul Lewicki, 2005) of Statistics: Methods and
Applications, the Electronic Statistics Textbook (a popular on-line
resource on statistics and data mining), a co-author of Practical
Text Mining and Statistical Analysis for Non-Structured Text Data
Applications (2012) and Practical Predictive Analytics and
Decisioning Systems for Medicine (2014); he is also a contributing
author to the popular Handbook of Statistical Analysis and Data
Mining Applications (2009). Dr. Hill also authored numerous patents
related to data science, Machine Learning, and specialized
applications of of analytics to various domains.
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