Anatomic Pathology Procedure Manual.
Surgical Pathology
Reports, Vocabulary Listing: 60,000 words; 500,000 phrases.
Modal Logic Theory for Pathology Inference.
Spreadsheet Order Logic for Pathology Inference.
Infinite Papillomas: Model for Unbounded Tumor Growth.
The Johns Hopkins
Autopsy Resource
(JHAR)
G. William Moore, M.D., Ph.D,
Jules J. Berman, Ph.D., M.D.,
Grover M. Hutchins, M.D.
Robert E. Miller, M.D.
Source of over 50,000 indexed and searchable autopsy summaries.
From the Department of Pathology
of The Johns Hopkins Medical Institutions.
First Internet version, November 1995.
First Revised version, April 1996.
Second Revised version, July 1996.
Third Revised version, April 1999.
Fourth Revised version, September 1999.
The JHAR is Public Domain.
Sponsored by The Johns Hopkins Medical Institutions
Department of Pathology
Query the JHAR
NOTICE: Access to autopsy files has been temporarily suspended,
in order to bring this website into compliance with
HIPAA regulations.
HIPAA regulations went into effect April 14, 2003.
- The Johns Hopkins Autopsy Resource (JHAR)
consists of human autopsy reports (text only), which have been
computer-translated into concept-unique-identifiers
Unified Medical Language System Metathesaurus of the
United States National Library of Medicine.
- To begin a search, type in ONE OR TWO ENGLISH WORDS,
and click on the SUBMIT button.
- The first twenty autopsy reports containing
the desired term will be displayed.
- If you select a term which occurs only rarely,
then you may have to wait a few minutes to obtain your results.
- Autopsy reports in the JHAR are presented
in ascending order of age at death (in decades).
Therefore, younger patients will appear first.
- If you select a term that appears only in older patients,
then you may have to wait a few minutes to obtain your results.
- Each autopsy facesheet shows:
age in decades, race, sex,
and decade of autopsy for the patient.
- Some autopsy diagnoses may appear awkward,
because they represent a computer-translation from
the original autopsy report. In addition to word-translation
errors, the computer-translator may also mistakenly divide sentences
in the original autopsy report at the wrong positions.
JOHNS HOPKINS AUTOPSY COLLABORATIVE TISSUE RESOURCE
The Johns Hopkins Autopsy Collaborative Tissue Resource (JHACTR)
provides access to formalin-fixed, paraffin-embedded human tissue,
with associated clinical data for research studies,
particularly studies focused on translating
basic research findings into clinical applications.
The JHACTR has a database that contains pathologic and
clinical information about the large collection of
human tissue specimens that are available for research.
Through the JHACTR database, researchers can determine
whether the JHACTR has the tissues and patient data
they need for their individual research studies.
It should be noted that some tissues in the JHACTR
have long prefixation intervals or methods of fixation
that might render them unsuitable for certain research protocols.
Eposters: Advancing Pathology Informatics, Imaging, Internet (APIII'2001).
Gödelization of a Pathology Database:
Re-identification by Inference.
G. William Moore, MD, PhD
Lawrence A. Brown, MD,
Robert E. Miller, MD.
Arch Pathol Lab Med. 2002;:in press.
Goethe University Autopsy Register: Anonymized Bilingual Database.
W. Giere, MD.
G. William Moore, MD, PhD
Grover M. Hutchins, MD.
Arch Pathol Lab Med. 2002;:in press.
Eposters:
Advancing Pathology Informatics, Imaging, Internet (APIII'2000).
Set Theory Definition and Algorithm for Medical De-Identification.
G. William Moore, MD, PhD
Lawrence A. Brown, MD,
Robert E. Miller, MD.
Arch Pathol Lab Med. 2001;:in press.
Web-based Free-Text Query System for Surgical Pathology Reports
with Automatic Case De-Identification.
Robert E. Miller, MD,
John K. Boitnott, MD,
G. William Moore, MD, PhD.
Arch Pathol Lab Med. 2001;:in press.
UMLS Concordance for Human Embryology.
Gladys L. G. Alonsozana, MD,
G. William Moore, MD, PhD,
Grover M. Hutchins, MD.
Arch Pathol Lab Med. 2001;:in press.
UMLS Concordance for a Comprehensive Pathology Text.
John H. Sinard, MD, PhD,
G. William Moore, MD, PhD.
Arch Pathol Lab Med. 2001;:in press.
Linguistic Inventory of the Johns Hopkins Surgical Pathology Database.
G. William Moore, MD, PhD,
Robert E. Miller, MD.
Arch Pathol Lab Med. 2001;:in press.
Platform Presentations.
Advancing Pathology Informatics, Imaging, Internet (APIII'2000).
UMLS Concordance for Pathology Text.
John H. Sinard, MD, PhD,
Gladys L. G. Alonsozana, MD,
Grover M. Hutchins, MD.
G. William Moore, MD, PhD.
Free-Text Query System for Surgical Pathology Reports
with Automatic Case De-Identification.
Robert E. Miller, MD,
John K. Boitnott, MD,
Lawrence A. Brown, MD,
G. William Moore, MD, PhD.
Eposters:
Advancing Pathology Informatics, Imaging, Internet (APIII'1999).
Automatic Indexing of a Pathology Image Archive using UMLS.
G. William Moore, M.D., Ph.D., David S. Brenner, M.D.,
Jules J. Berman, Ph.D., M.D.
Arch Pathol Lab Med. 2000;124:809.
Dermatopathology False Negative Terms in UMLS.
Grace F. Kao, M.D., G. William Moore, M.D, Ph.D.
Arch Pathol Lab Med. 2000 Jun;124:809.
Japanese Language Annotation of an Internet Pathology Image Archive.
Daisuke Nonaka, M.D, G. William Moore, M.D., Ph.D.,
Yoichi Satomura, M.D
Arch Pathol Lab Med. 2000 Jun;124:820.
Turkish Language Annotation of an Internet Pathology Image Archive.
G. William Moore, MD, PhD., Enver Vardar, MD.
Yener S. Erozan, M.D., Fatih Durmusoglu, M.D.
Arch Pathol Lab Med. 2000 Jun;124:820.
INTERNET LINKS.
-
Internet-Based Quality Improvement Documentation at the VAMHCS.
-
Over 5,000 image-legends
from the U. S. Armed Forces Institute of Pathology Electronic Fascicles.
- U. S. Department of Health & Human Services:
Standards for Privacy of Individually Identifiable Health Information.
-
Translations of medical vocabulary
into foreign languages.
-
Free computer translation of short texts.
-
Pathology-to-UMLS Translator, Surgical Pathology Examples.
-
Pathology-to-UMLS Translator, Autopsy Examples.
-
Pathology-to-UMLS Translator, Congenital Heart Disease Examples.
-
U. S. Natl Library Medicine Unified Medical Language System (UMLS).
-
U. S. Natl Library Medicine UMLS Metathesaurus Documentation.
-
U. S. Natl Library Medicine Medical Subject Headings (MeSH).
-
U. S. Natl Library Medicine UMLS Knowledge Sources.
-
U. S. Natl Cancer Institute Human Tissue Archive.
Prospective procurement of human tissues for research.
-
U. S. Natl Cancer Institute Breast Cancer Tissue Resource.
Prospective procurement of human breast tissue for research.
-
U. S. Natl Cancer Institute Human Tissue Resource.
Prospective procurement of human tissue for research.
-
Systematized Nomenclature of Human and Veterinary Medicine (SNOMED).
-
College of American Pathologists (CAP).
-
Bibliography of Studies on Staged Human Embryos.
-
Bibliography of Studies on JHAR Autopsies.
-
http://grants.nih.gov/grants/guide/rfa-files/RFA-CA-01-006.html
The objective of this initiative for a SHARED PATHOLOGY INFORMATICS NETWORK
is to create a model Web-based system to access data related to archived
human specimens at multiple institutions.
-
Vanderbilt, Hopkins, Pittsburgh Shared Pathology Informatics Network:
Appendix Six: Demographic and Linguistic Inventory
of the Johns Hopkins Surgical Pathology Database.
-
Student Lecture on Computer Privacy of Individually Identifiable
Medical Information. Presented: December 6, 2000,
Baltimore City College High School, Baltimore, MD.
- SNOMED is the
Systematized Nomenclature of Human and Veterinary Medicine,
and consists of over 280,000 medical terms.
For further information related to SNOMED,
please visit the
College of American Pathologists website. .
- Moore GW, Berman JJ.
Anatomic pathology data mining. Chapter 4.
In: Cios KJ. Medical Data Mining and Knowledge Discovery.
Published, December 4, 2000, within the series:
"Studies in Fuzziness and Soft Computing",
Physica-Verlag Heidelberg, a Springer-Verlag Company.
2001. XVIII, 502 pp. 98 figs., 98 tabs. Hardcover.
ISBN: 3-7908-1340-0.
Copyright Springer-Verlag: Berlin/Heidelberg 1999.
- Prof. R. L. Rivest's cryptography and security page.
http://theory.lcs.mit.edu/~rivest/crypto-security.html
Prof. Rivest is the R in the RSA (Rivest-Shamir-Adelman)
public-private cryptography algorithm, one of the intellectual
masterpieces of this century.
-
USNLM Publications on Ethical Issues in Research involving Human Subjects,
including autopsy research.
http://www.nlm.nih.gov/pubs/cbm/hum_exp.html
-
U. S. Code of Federal Regulations,
45 CFR Subtitle A (10-1-95 Edition), part 46.101 (b) (4).
The complete Common Rule document (45CFR46),
on human subjects research, at URL:
http://www.uaf.edu/oar/irb/45cfr46.html
or at URL:
http://ohrp.osophs.dhhs.gov/humansubjects/guidance/45cfr46.htm
-
U. S. Department of Health and Human Services.
Standards for Privacy of Individually Identifiable Health Information.
http://aspe.hhs.gov/admnsimp/
-
Human subjects research, including autopsies:
National Bioethics Advisory Commission (NBAC).
Executive Order 12975, October 3, 1995.
Federal Register: October 5, 1995. v. 60.; no. 193. pp. 52063-52065.
http://bioethics.gov/general.html
-
National Bioethics Advisory Commission (NBAC),
Recommendations to the Common Rule:
http://bioethics.gov/pubs.html
-
U. S. Government Printing Office, Superintendent of Documents,
including Federal Register.
http://www.access.gpo.gov/su_docs/
-
The University of Mississippi Multiple Project Assurance Document
for human subjects research, at URL:
http://www.olemiss.edu/depts/research/irb/assurance.htm
-
National Cancer Institute's Confidentiality Brochure, at URL:
http://www-cdp.ims.nci.nih.gov/policy.html
-
Office of Human Research Protections (OHRP), within OPHS, DHHS
(formerly, Office for Protection from Research Risks (OPRR)), at URL:
http://ohrp.osophs.dhhs.gov
-
Joint Commission on Accreditation of Healthcare Organizations.
http://www.jcaho.org
-
National Committee for Clinical Laboratory Standards (NCCLS).
http://www.nccls.org
-
College of American Pathologists.
http://www.cap.org
-
United States and Canadian Academy of Pathology.
http://www.uscap.org
-
The Johns Hopkins Autopsy Resource.
http://www.medparse.com/
-
Description of the Veterans Affairs VistA computer system.
http://www.hardhats.org/
-
How to obtain a nominal-cost CD of the non-confidential parts
of the Veterans Affairs VistA computer system, through the
Freedom of Information Act (FOIA).
http://www.hardhats.org/foia.html
-
Surgical Pathology Reports: Vocabulary Listing.
http://www.medparse.com/jharsprw.htm
-
Autopsy Reports: Vocabulary Listing.
http://www.medparse.com/jharaurw.htm
-
Dr. Ed Friedlander's Introduction to the Autopsy.
http://www.pathguy.com/autopsy.htm
-
Dr. G. William Moore's Pathology Informatics Bookshelf.
http://www.medparse.com/jharbksf.htm
-
Dr. Jules J. Berman's Lightning Hypertext of Disease.
http://www.pathinfo.com/
-
Dr. Ed O. Uthman's Introduction to the Autopsy.
http://www.neosoft.com/~uthman/
-
Dr. Shawn E. Cowper's Pathology Education Websites.
http://www.pathmax.com/
-
University of Rochester Pathology Resources.
http://www.urmc.rochester.edu/smd/pathres/long.html
-
University of Michigan Pathology Resources.
http://141.214.5.219/pathresourceak/path_resources.html
-
Armed Forces Institute of Pathology Autopsy Diagrams.
http://www.afip.org/homes/oafme/diagrams.html
-
Tulane University Autopsy Pathology Images.
http://www.som.tulane.edu/classware/pathology/medical_pathology/McPath
-
University of Leicester Autopsy Cases.
http://www.le.ac.uk/pathology/teach/va2/titlpag1.html
-
Internet Pathology Laboratory for Medical Education.
http://www-medlib.med.utah.edu/WebPath/webpath.html
- PubMed Stop Words (U. S. National Library of Medicine):
http://www.ncbi.nlm.nih.gov/entrez/query/static/help/pmhelp.html#Stopwords
- PubMed Help (U. S. National Library of Medicine):
http://www.ncbi.nlm.nih.gov/entrez/query/static/help/pmhelp.html
- PubMed Stop Words: Local Copy.
http://www.medparse.com/umlsstop.htm
- Synonyms for UMLS Concept Unique Identifiers:
http://www.medparse.com/umlspsdo.htm
- German Language Stop Words.
http://www.medparse.com/deutbarr.htm
- German Language Collocations (Frankfurt Autopsy Resource).
http://www.medparse.com/deutcoll.htm
- General Information about Pathology and Autopsies.
http://www.medparse.com/neta0405.htm
- Thoughts about Pathology as a Career.
http://www.medparse.com/billgrow.htm
- Dr. G. William Moore's Speculations about Mathematics.
http://www.medparse.com/jharempr.htm
- Dr. G. William Moore's Introduction to the Internet.
http://www.medparse.com/whatnett.htm
- Dr. G. William Moore's Introduction to Calculus.
http://www.medparse.com/whatcalc.htm
- Dr. G. William Moore's Introduction to Medical Differential Diagnosis.
http://www.medparse.com/whatdfdx.htm
- Dr. G. William Moore's Introduction to Artificial Intelligence.
http://www.medparse.com/whatisai.htm
- Dr. G. William Moore's Introduction to Medical Ontologies.
http://www.medparse.com/whatonto.htm
- Dr. G. William Moore's Introduction to Cryptography.
http://www.medparse.com/whatcryp.htm
- Dr. G. William Moore's Introduction to Pathology Informatics.
http://www.medparse.com/whatpinf.htm
-
Practice Guidelines for Autopsy Pathology
Hutchins GM, Berman JJ, Moore GW, Hanzlick R,
and the Autopsy Committee of the College of American Pathologists.
Archives of Pathology and Laboratory Medicine. 1999; 123:1085-1092.
- Moore GW, Berman JJ, Sydnor DL.
Fractal dimension for pathology images,
a repeatable and quantitative measurement
of nuclear rim irregularity.
Am J Clin Pathol 102:538, 1994.
- Moore GW, Berman JJ, Moore GW, Brown LA.
Software for image segmentation and analysis in pathology (ISAP):
public domain image software and source code developed at the Baltimore
VA Medical Center.
Am J Clin Pathol 102:538-539, 1994.
- Moore GW, Berman JJ, Sydnor DL.
Automated edge detection in image analysis:
distinguishing the nucleus from the
cytoplasm without a user's threshold estimate.
Am J Clin Pathol 102:539, 1994.
Over 5,000 pathology image links!
Visit our
tumor image site,
and query over 5,000 images related to skin, breast,
uterus, cervix, cns, eye, bone marrow, thyroid, parathyroid,
kidney, bone and lung.
Gene Links!
Visit our
Genbank link page and query over 57,000 indexed molecular species.
What is The Johns Hopkins Autopsy Resource (JHAR)?
The
The Johns Hopkins Autopsy Resource (JHAR) is a
collection of over 50,000 autopsy facesheets, contributed by
the Department of Pathology of The Johns Hopkins Medical Institutions.
An autopsy facesheet is the summary of final diagnoses,
which typically appears as the first page in an autopsy report.
For each facesheet record in the JHAR, there is a DEMOGRAPHIC LINE ,
followed by DIAGNOSES . In order to maintain
confidentiality,
no names of patients, or care-givers
are present in the demographic line. Confidentiality is protected
by a double-brokered encryption of patient identifiers,
which requires the participation of both the
.
JHAR administrator, .
and the contributing institution to decrypt.
The only demographic information is:
age in decades, race, sex, decade of autopsy,
and key-number. The DIAGNOSES in the
original autopsy facesheet have been stripped of names of persons,
locations, and institutions; and diagnoses have been
automatically translated
into SNOMED-compatible terms.
This plan of
anonymization of medical records follows guidelines
recently discussed in the United States Senate.
Contributions of autopsy facesheets
are being accepted from academic
medical centers worldwide. For additional information,
send queries to the
JHAR administrator, at: webmaster@medparse.com .
JHAR Scientific Directors
G. William Moore, MD, PhD
Jules J. Berman, PhD, MD
Grover M. Hutchins, MD
Robert E. Miller, MD.
Selected Full Text Publications of Drs. Berman, Moore and Hutchins,
and Miller.
Confidentiality and Institutional Approval.
The autopsy facesheets in The Johns Hopkins Autopsy
Collaborative Tissue Resource represent
confidential medical records of deceased patients.
Every reasonable effort has been made to protect the identity
of the patient and care-givers,
particularly in placing a component of the medical
record in such a public venue as the Internet. The only mechanism
for obtaining more information regarding an individual JHAR facesheet
is to correspond with the database administrator,
who will forward your letter to the
appropriate official in the Department of Pathology
of The Johns Hopkins Medical Institutions.
The Johns Hopkins Medical Institutions
will respond in accordance with policies
set by the Institutional Review Board (IRB).
Quick Overview of the JHAR.
To gain a quick overview of the autopsy facesheet files available
in the JHAR, translated into the Unified Medical Language System (UMLS),
you should download ONE of the autopsy facesheet files.
NOTICE: Access to autopsy files has been temporarily suspended,
in order to bring this website into compliance with
HIPAA regulations.
HIPAA regulations go into effect April 14, 2003.
ALL FILES ARE IN XML FORMAT,
BUT MAY BE DISPLAYED ON AN ORDINARY (HTML) INTERNET BROWSER,
SUCH AS NETSCAPE OR INTERNET EXPLORER.
NOTICE: Access to autopsy files has been temporarily suspended,
in order to bring this website into compliance with
HIPAA regulations.
HIPAA regulations went into effect April 14, 2003.
NOTICE:
The Johns Hopkins Autopsy Resource (JHAR)
website has Institutional Review Board (IRB)
approval from The Johns Hopkins Medical Institutions,
and is in compliance with applicable U. S. Federal Guidelines [1,2].
The JHAR consists of DE-IDENTIFIED MEDICAL INFORMATION (DIMI).
Compliance is insured through the following steps:
The DEMOGRAPHICS are reduced
to four packets of information:
age in decades, race, sex, and decade of autopsy.
These minimal public demographics are sufficient
for determining the general clinical context of a case,
but are insufficient to reveal the identity of the individual patient.
Exact identifiers noted by the Health Insurance Portability
and Accountability Act include:
"Name; address, including street address, city,
county, zip code, or equivalent geocodes; names of relatives and
employers; birth date; telephone and fax numbers; e-mail addresses;
social security number; medical record number; health plan beneficiary
number; account number; certificate/license number; any vehicle or
other device serial number; web URL; Internet Protocol (IP) address;
finger or voice prints; photographic images; and any other unique
identifying number, characteristic, or code (whether generally
available in the public realm or not) that the covered entity has
reason to believe may be available to an anticipated recipient of the
information...."
A unique, DOUBLE-BROKERED KEY-NUMBER [6]
is assigned to each case by an unbreakable encryption
system, the so-called ONE-TIME PAD METHOD [24].
As an additional security measure, in some cases,
THE KEY-NUMBER MAY CORRESPOND TO UP TO TEN INDIVIDUAL PATIENTS.
This means that, even if you guess that
a particular autopsy facesheet in the JHAR
might correspond to a particular patient,
you still do not know whether this key-number
corresponds to other patients, as well.
The identity of a given key-number,
and whether this key-number corresponds
to more than one patient,
can only be obtained through
negotiation with The Johns Hopkins Medical Institutions
Department of Pathology and Institutional Review Board,
exclusively for legitimate medical research projects.
The NUMERIC INFORMATION contained in each patient-record
consists EXCLUSIVELY of two numbers,
which cannot be traced to an individual patient, namely:
age in decades and decade of autopsy.
In each record, there are NO NAMES, NO DATES, NO INSTITUTIONS,
NO LOCATIONS, and NO QUANTITIES, except for
age in decades and decade of autopsy.
All diagnoses correspond to UMLS CODES,
not necessarily to the exact language of the original autopsy report.
The UMLS codes are expressed in plain English,
corresponding to the generic medical language
used in The Johns Hopkins Medical Institutions,
NOT to the language of specific, proprietary coding systems.
English terms that happen to match to those
proprietary coding systems are purely coincidental.
NO PATIENTS DECEASED SINCE 1997 (WITHIN THE LAST TWO YEARS)
are listed in the JHAR,
in compliance with U. S. Federal guidelines [2].
The proposed new law goes into force in year 2001,
at the earliest.
In this time interval, NO ADDITIONAL PATIENTS
WILL BE ADDED TO THE JHAR,
until further testing of the system is completed.
PENDING STATISTICAL STUDIES of the JHAR
show that patients are NOT
uniquely identified by demographics,
since numerical demographics are grouped
by age in decades and decade of autopsy;
and since each keynumber may match
up to ten actual patients.
ATTEMPTS TO RE-IDENTIFY PATIENTS
in the JHAR medical research resource are UNLAWFUL,
and subject to civil and criminal penalties [2], as follows:
"Section 1177 establishes penalties for any person that knowingly
uses a unique health identifier, or obtains or discloses individually
identifiable health information in violation of the part. The penalties
include: (1) A fine of not more than $50,000 and/or imprisonment of not
more than 1 year; (2) if the offense is ``under false pretenses,'' a
fine of not more than $100,000 and/or imprisonment of not more than 5
years; and (3) if the offense is with intent to sell, transfer, or use
individually identifiable health information for commercial advantage,
personal gain, or malicious harm, a fine of not more than $250,000 and/
or imprisonment of not more than 10 years. We note that these penalties
do not affect any other penalties that may be imposed by other federal
programs."
PRIVACY AND CRYPTOGRAPY REFERENCES.
1.
U. S. Code of Federal Regulations,
45 CFR Subtitle A (10-1-95 Edition), part 46.101 (b) (4).
The complete Common Rule document (45CFR46), at URL:
http://www.uaf.edu/oar/irb/45cfr46.html
or at URL:
http://ohrp.osophs.dhhs.gov/humansubjects/guidance/45cfr46.htm
2.
U. S. Department of Health and Human Services.
Standards for Privacy of Individually Identifiable Health Information.
Fed Regist. 1999 Nov 3;64(212):59917-59966.
http://aspe.hhs.gov/admnsimp/
3.
Protection of human subjects: categories of research that may be
reviewed by the Institutional Review Board (IRB) through an expedited
review procedure--FDA. Notice.
Fed Regist. 1998 Nov 9;63(216 Pt 1):60353-60356.
PMID: 10187395; UI: 99080910.
4.
Berman JJ, Moore GW, Hutchins GM.
Maintaining patient confidentiality in the public domain Internet
Autopsy Database (IAD).
Proc AMIA Annu Fall Symp. 1996;:328-332.
PMID: 8947682; UI: 97103310.
5.
Berman JJ, Moore GW, Hutchins GM.
U. S. Senate Bill 422. The Genetic Confidentiality
and Nondiscrimination Act of 1997.
Diagn Mol Pathol. 1998 Aug;7(4):192-196.
PMID: 9917128; UI: 99114200.
6.
Sweeney L.
Computational Disclosure Control:
A Primer on Data Privacy Protection.
PhD Thesis. Massachusetts Institute of Technology. Spring, 2001. Draft.
Summary of several current systems for
computational disclosure control,
used in the USA and in the European Community.
7.
Sweeney L.
Three computational systems for disclosing medical data
in the year 1999.
Medinfo. 1998;9 Pt 2:1124-1129.
PMID: 10384634; UI: 99312628.
8.
Sweeney L.
Privacy and medical-records research.
N Engl J Med. 1998 Apr 9;338(15):1077; discussion 1077-1078.
PMID: 9537887; UI: 98181820.
9.
Sweeney L.
Guaranteeing anonymity when sharing medical data, the Datafly System.
Proc AMIA Annu Fall Symp. 1997;:51-55.
PMID: 9357587; UI: 98020458.
10.
Sweeney L.
Replacing personally-identifying information
in medical records, the Scrub system.
Proc AMIA Annu Fall Symp. 1996;:333-337.
PMID: 8947683; UI: 97103311.
11.
Moore GW, Berman JJ, Hanzlick RL, Buchino JJ, Hutchins GM.
A prototype internet autopsy database:
1625 consecutive fetal and neonatal autopsy facesheets
spanning twenty years.
Arch Pathol Lab Med. 1996; 120:782-785.
12.
Berman JJ, Moore GW, Hutchins GM.
Internet Autopsy Database.
Human Pathol. 1997; 28:393-394.
13.
Carter JR, Nash NP, Cechner RL, Platt RD.
Proposal for a national autopsy data bank.
A potential major contribution of pathologists
to the health care of the nation.
Am J Clin Pathol. 76 (Suppl): 597-617, 1981.
14.
Peery TM.
The autopsy data bank.
A proposal for pathologists to contribute
to the health care of the nation.
Am J Clin Pathol 69 (Suppl): 258-259, 1978.
15.
Wagner BM.
The future of environmental and toxicologic pathology.
Human Pathol. 27:1003-1004, 1996.
16.
Mullick F.
The Center for Environmental Pathology and Toxicology
at the Armed Forces Institute of Pathology.
Human Pathology 52: 752-753, 1997.
18.
U. S. Government Documents:
http://thomas.loc.gov
19.
National Bioethics Advisory Commission (NBAC).
http://bioethics.gov/general.html
Executive Order 12975, October 3, 1995.
Federal Register: October 5, 1995. v. 60.; no. 193. pp. 52063-52065
20.
National Bioethics Advisory Commission (NBAC),
Recommendations to the Common Rule:
http://bioethics.gov/pubs.html
21.
U.S. National Library of Medicine.
Unified Medical Language System.
http://www.nlm.nih.gov/research/umls/
22.
Schneier B.
Applied Cryptography, Second Edition.
Protocols, Algorithms, and Source Code in C.
New York: John Wiley & Sons, 1996.
23.
Moore GW, Brown LA, Miller RE.
Set Theory Definition and Algorithm for Medical De-Identification.
Arch Pathol Lab Med. 2001;:in press.
24.
The University of Mississippi has published
its Multiple Project Assurance Document at URL:
http://www.olemiss.edu/depts/research/irb/assurance.htm
25.
National Cancer Institute's Confidentiality Brochure, at URL:
http://www-cdp.ims.nci.nih.gov/policy.html
26.
Office of Human Research Protections (OHRP), within OPHS, DHHS
(formerly, Office for Protection from Research Risks (OPRR)), at URL:
http://ohrp.osophs.dhhs.gov
DEMOGRAPHICS DISTRIBUTION.
AGE IN DECADES vs. DECADE OF AUTOPSY.
SECURITY AGAINST PATIENT RE-IDENTIFICATION.
| AGE | 1890 | 1900 | 1910 | 1920 |
1930 | 1940 | 1950 | 1960 |
1970 | 1980 | 1990 |
| 0-9 | 267 | 339 | 1334 |
2731 | 2237 | 2171 | 2424 | 2040 |
1234 | 1100 | 801 |
| 10-19 | 83 | 137 | 128 |
238 | 272 | 245 | 175 | 199 |
174 | 112 | 55 |
| 20-29 | 200 | 282 | 238 |
335 | 404 | 336 | 207 | 178 |
167 | 217 | 79 |
| 30-39 | 225 | 280 | 289 |
419 | 566 | 474 | 478 | 351 |
228 | 302 | 201 |
| 40-49 | 266 | 305 | 305 |
480 | 630 | 650 | 858 | 772 |
484 | 341 | 282 |
| 50-59 | 226 | 261 | 253 |
420 | 642 | 653 | 1138 | 1127 |
867 | 515 | 248 |
| 60-69 | 114 | 153 | 157 |
336 | 450 | 581 | 1095 | 1342 |
999 | 712 | 337 |
| 70-79 | 55 | 55 | 68 |
152 | 222 | 263 | 743 | 1008 |
698 | 547 | 287 |
| >80 | 14 | 16 |
9 | 23 | 51 | 59 | 261 |
483 | 273 | 239 | 192 |
DISCUSSION: A patient is potentially identifiable
by demographics alone if there is one and only one patient
within a single demographic category.
The number of cases in each demographic category
(age in decades vs. decade of autopsy)
is shown above. This table demonstrates
that, for the most part, no single demographic category
contains a unique element.
Thus in general, demographic information alone
on JHAR cases does not suffice
to uniquely identify the patient.
The demographic categories
most vulnerable to re-identification
are octogenarians from the end of the nineteenth
and beginning of the twentieth century,
when relatively few patients lived to that age.
The single patient identifiable by
demographics alone is an octagenarian female
from the 1910 decade (see next panel).
Patients deceased for over fifty years
are least likely to have significant confidentiality issues,
but may possibly contribute to significant research perspectives.
It is the intention of the
emerging U. S. Federal privacy guidelines
to
encourage epidemiologic research,
even if there are possible privacy issues
for long-deceased patients.
DEMOGRAPHICS DISTRIBUTION.
SEX / AGE IN DECADES vs. DECADE OF AUTOPSY.
SECURITY AGAINST PATIENT RE-IDENTIFICATION.
| AGE | 1890 | 1900 | 1910 |
1920 | 1930 | 1940 | 1950 |
1960 | 1970 | 1980 | 1990 |
| 0-9M | 194 | 189 | 740 |
1525 | 1257 | 1198 | 1309 |
1117 | 681 | 583 | 273 |
| 0-9F | 73 | 150 |
594 | 1206 | 980 | 973 | 1115 |
923 | 553 | 517 | 528 |
| 10-19M | 33 | 70 |
63 | 111 | 116 | 135 | 91 |
114 | 92 | 73 | 29 |
| 10-19F | 50 | 67 | 65 |
127 | 156 | 110 | 84 | 85 |
82 | 39 | 26 |
| 20-29M | 123 | 168 | 147 |
176 | 186 | 166 | 75 | 87 |
91 | 118 | 38 |
| 20-29F | 77 | 114 | 91 |
159 | 218 | 170 | 132 | 91 |
76 | 99 | 41 |
| 30-39M | 130 | 179 | 157 |
218 | 291 | 237 | 207 | 164 |
125 | 153 | 96 |
| 30-39F | 95 | 101 | 132 |
201 | 275 | 237 | 271 | 187 |
103 | 149 | 105 |
| 40-49M | 163 | 212 | 212 |
305 | 362 | 380 | 466 | 396 |
293 | 192 | 163 |
| 40-49F | 103 | 93 | 93 |
175 | 268 | 270 | 392 | 376 |
191 | 149 | 119 |
| 50-59M | 150 | 200 | 191 |
292 | 428 | 390 | 673 | 655 |
486 | 281 | 168 |
| 50-59F | 76 | 61 | 62 |
128 | 214 | 263 | 465 | 472 |
381 | 234 | 80 |
| 60-69M | 80 | 118 | 126 |
253 | 310 | 405 | 676 | 812 |
579 | 432 | 233 |
| 60-69F | 34 | 35 | 31 |
83 | 140 | 176 | 419 | 530 |
420 | 280 | 104 |
| 70-79M | 41 | 45 | 58 |
132 | 162 | 176 | 435 | 551 |
377 | 323 | 220 |
| 70-79F | 14 | 10 | 10 |
20 | 60 | 87 | 308 | 457 |
321 | 224 | 67 |
| >80M | 8 | 12 |
8 | 19 | 37 | 34 | 143 |
242 | 126 | 119 | 154 |
| >80F | 6 | 4 |
1 | 4 | 14 | 25 | 118 |
241 | 147 | 120 | 38 |
With a single exception, namely the single
>80F born in the 1910-1919 decade,
the demographics in the JHAR satisfy Sweeney's definition of
k-ANONYMOUS, for k=4, as described in:
Sweeney L.
Computational Disclosure Control.
A Primer on Data Privacy Protection.
MIT. PhD Thesis, Spring 2001. Draft.
For additional information,
send queries to the JHAR administrator, at URL:
.
George.Moore4@med.va.gov .
Last Updated: July 13, 2005, G. William Moore, MD, PhD.