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Dive into the research topics where Tina Seto is active.

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Featured researches published by Tina Seto.


Cancer | 2014

Breast cancer treatment across health care systems: Linking electronic medical records and state registry data to enable outcomes research

Allison W. Kurian; Aya Mitani; Manisha Desai; Peter Paul Yu; Tina Seto; Susan C. Weber; Cliff Olson; Pragati Kenkare; Scarlett Lin Gomez; Monique A. de Bruin; Kathleen C. Horst; Jeffrey Belkora; Suepattra G. May; Dominick L. Frosch; Douglas W. Blayney; Harold S Luft; Amar K. Das

Understanding of cancer outcomes is limited by data fragmentation. In the current study, the authors analyzed the information yielded by integrating breast cancer data from 3 sources: electronic medical records (EMRs) from 2 health care systems and the state registry.


Breast Cancer Research | 2015

Chromosomal copy number alterations for associations of ductal carcinoma in situ with invasive breast cancer

Anosheh Afghahi; Erna Forgó; Aya Mitani; Manisha Desai; Sushama Varma; Tina Seto; Joseph Rigdon; Kristin C. Jensen; Megan L. Troxell; Scarlett Lin Gomez; Amar K. Das; Andrew H. Beck; Allison W. Kurian; Robert B. West

IntroductionScreening mammography has contributed to a significant increase in the diagnosis of ductal carcinoma in situ (DCIS), raising concerns about overdiagnosis and overtreatment. Building on prior observations from lineage evolution analysis, we examined whether measuring genomic features of DCIS would predict association with invasive breast carcinoma (IBC). The long-term goal is to enhance standard clinicopathologic measures of low- versus high-risk DCIS and to enable risk-appropriate treatment.MethodsWe studied three common chromosomal copy number alterations (CNA) in IBC and designed fluorescence in situ hybridization-based assay to measure copy number at these loci in DCIS samples. Clinicopathologic data were extracted from the electronic medical records of Stanford Cancer Institute and linked to demographic data from the population-based California Cancer Registry; results were integrated with data from tissue microarrays of specimens containing DCIS that did not develop IBC versus DCIS with concurrent IBC. Multivariable logistic regression analysis was performed to describe associations of CNAs with these two groups of DCIS.ResultsWe examined 271 patients with DCIS (120 that did not develop IBC and 151 with concurrent IBC) for the presence of 1q, 8q24 and 11q13 copy number gains. Compared to DCIS-only patients, patients with concurrent IBC had higher frequencies of CNAs in their DCIS samples. On multivariable analysis with conventional clinicopathologic features, the copy number gains were significantly associated with concurrent IBC. The state of two of the three copy number gains in DCIS was associated with a risk of IBC that was 9.07 times that of no copy number gains, and the presence of gains at all three genomic loci in DCIS was associated with a more than 17-fold risk (P = 0.0013).ConclusionsCNAs have the potential to improve the identification of high-risk DCIS, defined by presence of concurrent IBC. Expanding and validating this approach in both additional cross-sectional and longitudinal cohorts may enable improved risk stratification and risk-appropriate treatment in DCIS.


Journal of Oncology Practice | 2016

Use of Gene Expression Profiling and Chemotherapy in Early-Stage Breast Cancer: A Study of Linked Electronic Medical Records, Cancer Registry Data, and Genomic Data Across Two Health Care Systems

Anosheh Afghahi; Maya B. Mathur; Caroline A. Thompson; Aya Mitani; Joseph Rigdon; Manisha Desai; Peter Paul Yu; Monique A. de Bruin; Tina Seto; Cliff Olson; Pragati Kenkare; Scarlett Lin Gomez; Amar K. Das; Harold S. Luft; George W. Sledge; Amy P. Sing; Allison W. Kurian

PURPOSE The 21-gene recurrence score (RS) identifies patients with breast cancer who derive little benefit from chemotherapy; it may reduce unwarranted variability in the use of chemotherapy. We tested whether the use of RS seems to guide chemotherapy receipt across different cancer care settings. METHODS We developed a retrospective cohort of patients with breast cancer by using electronic medical record data from Stanford University (hereafter University) and Palo Alto Medical Foundation (hereafter Community) linked with demographic and staging data from the California Cancer Registry and RS results from the testing laboratory (Genomic Health Inc., Redwood City, CA). Multivariable analysis was performed to identify predictors of RS and chemotherapy use. RESULTS In all, 10,125 patients with breast cancer were diagnosed in the University or Community systems from 2005 to 2011; 2,418 (23.9%) met RS guidelines criteria, of whom 15.6% received RS. RS was less often used for patients with involved lymph nodes, higher tumor grade, and age < 40 or ≥ 65 years. Among RS recipients, chemotherapy receipt was associated with a higher score (intermediate v low: odds ratio, 3.66; 95% CI, 1.94 to 6.91). A total of 293 patients (10.6%) received care in both health care systems (hereafter dual use); although receipt of RS was associated with dual use (v University: odds ratio, 1.73; 95% CI, 1.18 to 2.55), there was no difference in use of chemotherapy after RS by health care setting. CONCLUSION Although there was greater use of RS for patients who sought care in more than one health care setting, use of chemotherapy followed RS guidance in University and Community health care systems. These results suggest that precision medicine may help optimize cancer treatment across health care settings.


Journal of the American Medical Informatics Association | 2016

Synergistic drug combinations from electronic health records and gene expression

Yen S. Low; Aaron C Daugherty; Elizabeth A. Schroeder; William Chen; Tina Seto; Susan C. Weber; Michael Lim; Trevor Hastie; Maya B. Mathur; Manisha Desai; Carl Farrington; Andrew A Radin; Marina Sirota; Pragati Kenkare; Caroline A. Thompson; Peter Paul Yu; Scarlett Lin Gomez; George W. Sledge; Allison W. Kurian; Nigam H. Shah

ABSTRACT Objective: Using electronic health records (EHRs) and biomolecular data, we sought to discover drug pairs with synergistic repurposing potential. EHRs provide real-world treatment and outcome patterns, while complementary biomolecular data, including disease-specific gene expression and drug-protein interactions, provide mechanistic understanding. Method: We applied Group Lasso INTERaction NETwork (glinternet), an overlap group lasso penalty on a logistic regression model, with pairwise interactions to identify variables and interacting drug pairs associated with reduced 5-year mortality using EHRs of 9945 breast cancer patients. We identified differentially expressed genes from 14 case-control human breast cancer gene expression datasets and integrated them with drug-protein networks. Drugs in the network were scored according to their association with breast cancer individually or in pairs. Lastly, we determined whether synergistic drug pairs found in the EHRs were enriched among synergistic drug pairs from gene-expression data using a method similar to gene set enrichment analysis. Results: From EHRs, we discovered 3 drug-class pairs associated with lower mortality: anti-inflammatories and hormone antagonists, anti-inflammatories and lipid modifiers, and lipid modifiers and obstructive airway drugs. The first 2 pairs were also enriched among pairs discovered using gene expression data and are supported by molecular interactions in drug-protein networks and preclinical and epidemiologic evidence. Conclusions: This is a proof-of-concept study demonstrating that a combination of complementary data sources, such as EHRs and gene expression, can corroborate discoveries and provide mechanistic insight into drug synergism for repurposing.


eGEMs (Generating Evidence & Methods to improve patient outcomes) | 2018

Architecture and Implementation of a Clinical Research Data Warehouse for Prostate Cancer

Martin Seneviratne; Tina Seto; Douglas W. Blayney; James D. Brooks; Tina Hernandez-Boussard

Background: Electronic health record (EHR) based research in oncology can be limited by missing data and a lack of structured data elements. Clinical research data warehouses for specific cancer types can enable the creation of more robust research cohorts. Methods: We linked data from the Stanford University EHR with the Stanford Cancer Institute Research Database (SCIRDB) and the California Cancer Registry (CCR) to create a research data warehouse for prostate cancer. The database was supplemented with information from clinical trials, natural language processing of clinical notes and surveys on patient-reported outcomes. Results: 11,898 unique prostate cancer patients were identified in the Stanford EHR, of which 3,936 were matched to the Stanford cancer registry and 6153 in the CCR. 7158 patients with EHR data and at least one of SCIRDB and CCR data were initially included in the warehouse. Conclusions: A disease-specific clinical research data warehouse combining multiple data sources can facilitate secondary data use and enhance observational research in oncology.


Clinical Cancer Research | 2018

Higher Absolute Lymphocyte Counts Predict Lower Mortality from Early-Stage Triple-Negative Breast Cancer

Anosheh Afghahi; Natasha Purington; Summer S. Han; Manisha Desai; Emma Pierson; Maya B. Mathur; Tina Seto; Caroline A. Thompson; Joseph Rigdon; Melinda L. Telli; Sunil Badve; Christina Curtis; Robert B. West; Kathleen C. Horst; Scarlett Lin Gomez; James M. Ford; George W. Sledge; Allison W. Kurian

Purpose: Tumor-infiltrating lymphocytes (TIL) in pretreatment biopsies are associated with improved survival in triple-negative breast cancer (TNBC). We investigated whether higher peripheral lymphocyte counts are associated with lower breast cancer–specific mortality (BCM) and overall mortality (OM) in TNBC. Experimental Design: Data on treatments and diagnostic tests from electronic medical records of two health care systems were linked with demographic, clinical, pathologic, and mortality data from the California Cancer Registry. Multivariable regression models adjusted for age, race/ethnicity, socioeconomic status, cancer stage, grade, neoadjuvant/adjuvant chemotherapy use, radiotherapy use, and germline BRCA1/2 mutations were used to evaluate associations between absolute lymphocyte count (ALC), BCM, and OM. For a subgroup with TIL data available, we explored the relationship between TILs and peripheral lymphocyte counts. Results: A total of 1,463 stage I–III TNBC patients were diagnosed from 2000 to 2014; 1,113 (76%) received neoadjuvant/adjuvant chemotherapy within 1 year of diagnosis. Of 759 patients with available ALC data, 481 (63.4%) were ever lymphopenic (minimum ALC <1.0 K/μL). On multivariable analysis, higher minimum ALC, but not absolute neutrophil count, predicted lower OM [HR = 0.23; 95% confidence interval (CI), 0.16–0.35] and BCM (HR = 0.19; CI, 0.11–0.34). Five-year probability of BCM was 15% for patients who were ever lymphopenic versus 4% for those who were not. An exploratory analysis (n = 70) showed a significant association between TILs and higher peripheral lymphocyte counts during neoadjuvant chemotherapy. Conclusions: Higher peripheral lymphocyte counts predicted lower mortality from early-stage, potentially curable TNBC, suggesting that immune function may enhance the effectiveness of early TNBC treatment. Clin Cancer Res; 24(12); 2851–8. ©2018 AACR.


american medical informatics association annual symposium | 2012

Oncoshare: Lessons Learned from Building an Integrated Multi-institutional Database for Comparative Effectiveness Research

Susan C. Weber; Tina Seto; Cliff Olson; Pragati Kenkare; Allison W. Kurian; Amar K. Das


Journal of Clinical Oncology | 2015

Lymphopenia after adjuvant radiotherapy (RT) to predict poor survival in triple-negative breast cancer (TNBC).

Anosheh Afghahi; Maya B. Mathur; Tina Seto; Manisha Desai; Pragati Kenkare; Kathleen C. Horst; Amar K. Das; Caroline A. Thompson; Harold S. Luft; Peter Paul Yu; Scarlett Lin Gomez; Yen S. Low; Nigam H. Shah; Allison W. Kurian; George W. Sledge


Journal of Clinical Oncology | 2017

A natural language processing algorithm to measure quality prostate cancer care.

Tina Hernandez-Boussard; Panagiotis Kourdis; Rajendra Dulal; Michelle Ferrari; Solomon Henry; Tina Seto; Kathryn M McDonald; Douglas W. Blayney; James D. Brooks


The Journal of Urology | 2018

MP40-03 CHANGES IN PROSTATE SPECIFIC ANTIGEN SCREENING AND PROSTATE CANCER DIAGNOSIS AFTER GUIDELINE CHANGES

Christopher J. Magnani; Kevin Li; Tina Seto; Kathryn M McDonald; Douglas W. Blayney; James D. Brooks; Tina Hernandez-Boussard

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Pragati Kenkare

Palo Alto Medical Foundation

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Peter Paul Yu

Palo Alto Medical Foundation

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Caroline A. Thompson

Palo Alto Medical Foundation

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