| Literature DB >> 27054074 |
John Orechia1, Ameet Pathak1, Yunling Shi1, Aniket Nawani1, Andrey Belozerov1, Caitlin Fontes1, Camille Lakhiani1, Chetan Jawale1, Chetansharan Patel1, Daniel Quinn1, Dmitry Botvinnik1, Eddie Mei1, Elizabeth Cotter1, James Byleckie1, Mollie Ullman-Cullere1, Padam Chhetri1, Poornima Chalasani1, Purushotham Karnam1, Ronald Beaudoin1, Sandeep Sahu1, Yelena Belozerova1, Jomol P Mathew1.
Abstract
We live in the genomic era of medicine, where a patient's genomic/molecular data is becoming increasingly important for disease diagnosis, identification of targeted therapy, and risk assessment for adverse reactions. However, decoding the genomic test results and integrating it with clinical data for retrospective studies and cohort identification for prospective clinical trials is still a challenging task. In order to overcome these barriers, we developed an overarching enterprise informatics framework for translational research and personalized medicine called Synergistic Patient and Research Knowledge Systems (SPARKS) and a suite of tools called Oncology Data Retrieval Systems (OncDRS). OncDRS enables seamless data integration, secure and self-navigated query and extraction of clinical and genomic data from heterogeneous sources. Within a year of release, the system has facilitated more than 1500 research queries and has delivered data for more than 50 research studies.Entities:
Keywords: Clinical & genomic data integration; Clinical and translational informatics; Genomic profile; Next generation sequencing data; Precision medicine
Year: 2015 PMID: 27054074 PMCID: PMC4803771 DOI: 10.1016/j.atg.2015.08.005
Source DB: PubMed Journal: Appl Transl Genom ISSN: 2212-0661
Fig. 1OncDRS data sources and data integration pipeline. DFCI, Dana-Farber Cancer Institute; CRIS, Clinical Research Information System; CORIS, Clinical Operational and Research Information System; CRDR, Consented Research Data Repository.
A snapshot of all data in OncDRS, based on the data refresh on June 2015.
| Data type | No. of records | System type |
|---|---|---|
| Demographics | 276,039 | Clinical operations |
| Medical billing diagnosis | 8,270,751 | Clinical operations |
| Outpatient clinic appointments | 8,442,045 | Clinical operations |
| Cancer registry | 69,297 | Clinical operations |
| Laboratory results | 64,218,515 | Clinical operations |
| Outpatient pharmacy dispenses | 6,383,140 | Clinical operations |
| Chemotherapy order entry | 4,649,146 | Clinical operations |
| Protocol enrollments | 169,968 | Clinical operations |
| Profile OncoMap results | 5148 | Research |
| Profile OncoPanel results | 6378 | Research |
Fig. 2Real-time consent checking in OncDRS. CRDR, Consented Research Data Repository; CTMS, Clinical Trials Management System.
OncDRS user roles and privileges.
| Permissions | Faculty member | Non-faculty member |
|---|---|---|
| To access the system data dictionary | Yes | Yes |
| To perform aggregate queries | Yes | Yes, if a faculty member grants access. |
| To request detailed patient level data | Yes | Yes, if a faculty member grants access. At present submission of the request has to be done by the faculty member. |
| To access detailed patient data through system | Yes | Not currently, but they will be able to if listed in the protocol as collaborator |
| To create project teams with multiple collaborators | Yes | No |
| To function as a disease user committee chair or member | Yes | No |
OncDRS governing body approval requirements for different data types.
| Data type | Definition | Review needed | Module |
|---|---|---|---|
| Aggregate | Patient count is returned for a given query. | No review | Aggregate Query Tool |
| De-identified | All identifiable elements | Disease-based user committees | Data request and data extraction |
| Limited | Most identifiable elements are set to null or modified to prevent patient identification. | Disease-based user committees & IRB | Data request and data extraction |
| Identified | Identifiable elements are displayed, as they exist in the source system. | Disease-based user committees & IRB | Data request and data extraction |
Identifiable data elements include items such as medical record numbers, names, phone numbers, addresses, age, and encounter dates.
Fig. 3SPARKS portal displaying OncDRS capabilities. SPARKS, Synergistic Patient and Research Knowledge System; OncDRS, Oncology Data Retrial System.
Fig. 4A. OncDRS System details. PHS, Partners Healthcare System; LDAP, Lightweight Directory Access Protocol; AQT, Aggregate Query Tool; TDM, Transient Data Mart. B. OncDRS deployment diagram. PHS, Partners Healthcare System LDAP, Lightweight Directory Access Protocol; ONT, ontology; PM, project management; CRC, i2b2 Data Repository; IM, identity management; CORIS, Clinical Operational and Research Information System; CRDR, Consented Research Data Repository; AQT, Aggregate Query Tool; TDM, Transient Data Mart; IDM, Intermediate Data Mart.
Technological product stack used in OncDRS development.
| Product | OncDRS components | Vendor |
|---|---|---|
| Java/JEE 1.6 | Server side components | Oracle Inc. — open source |
| Spring 3.0.4 | Server side framework | Spring.io — open source |
| Hibernate 3.4.0.GA | ORM framework | |
| Servlet 2.5 | Server side components | Oracle Inc. — open source |
| JSP 2.1 | Web pages | Oracle Inc. — open source |
| Mail 1.4.1 | Email API | Oracle Inc. — open source |
| displaytag 1.2 | Web Presentation Library | |
| SiteMesh 2.4.2 | Web Pages Theme Library | |
| Jaxb 2.1 | Java XML Processing Library | Oracle Inc. — open source |
| Log4j 1.2.26 | Logger Library | Apache Foundation — open source |
| jQuery 1.4.2 | Javascript UI Library | |
| Oracle database | Oracle 11g | Oracle Inc. |
| MySQL database | MySQL 5.0.95 | Oracle Inc. — open source |
| Data Integration & ETL Tool | Power Center 9.1 | Informatica |