Literature DB >> 27054173

Transition probabilities of HER2-positive and HER2-negative breast cancer patients treated with Trastuzumab obtained from a clinical cancer registry dataset.

Monika Pobiruchin1, Sylvia Bochum2, Uwe M Martens2, Meinhard Kieser3, Wendelin Schramm1.   

Abstract

Records of female breast cancer patients were selected from a clinical cancer registry and separated into three cohorts according to HER2-status (human epidermal growth factor receptor 2) and treatment with or without Trastuzumab (a humanized monoclonal antibody). Propensity score matching was used to balance the cohorts. Afterwards, documented information about disease events (recurrence of cancer, metastases, remission of local/regional recurrences, remission of metastases and death) found in the dataset was leveraged to calculate the annual transition probabilities for every cohort.

Entities:  

Year:  2016        PMID: 27054173      PMCID: PMC4802671          DOI: 10.1016/j.dib.2016.03.039

Source DB:  PubMed          Journal:  Data Brief        ISSN: 2352-3409


Specifications table Value of the data Numbers of events (recurrences, metastases and death) are based on a patient cohort collected in a routine care environment, i.e., real world data. Comparison of raw numbers could serve as benchmarks for other cancer registries, hospitals, etc. Transition probabilities are estimated based on real world data only and could be used in other health economic Markov models. Transition probabilities could be utilized for validation procedures of other health economic models.

Data

We observed the disease progress for HER2-positive and HER2-negative patients in a routine care setting, i.e., real world setting. Data is presented twofold: Number of patients which shift from a defined health state (Disease free, Recurrence, Metastasis, Remission recurrence, Remission metastasis, Death) to another. Transition probabilities for every year over a time horizon of H=8 years. Numbers and transition probabilities are reported for every cohort: C-1: HER2-positive patients/not treated with Trastuzumab C-2: HER2-positive patients/treated with Trastuzumab C-3: HER2-negative patients/not treated with Trastuzumab.

Experimental design, materials and methods

Patients

Our patient cohort comprised n=3230 cases of female breast cancer diagnosed from 01-01-2004 till 31-12-2012 and documented at the clinical cancer registry of the Cancer Center Heilbronn-Franken (CC). Patients were included in the cohort according to the HERA (Herceptin Adjuvant Trial)-study protocol׳s inclusion/exclusion criteria [1] as far as the criteria were applicable to the local documentation setting. This yielded 892 matching cases. Afterwards patients were separated according to HER2-status and treatment with Trastuzumab. This cohort was separated into four subcohorts C-1 (positive HER2-status and no Trastuzumab treatment), C-2 (positive HER2-status and Trastuzumab treatment), C-3 (negative HER2-status and no Trastuzumab treatment) and C-4 (negative HER2-status and Trastuzumab treatment). However, cohort C-4 needed to be excluded from further analyses, since from a clinical point of view it is not appropriate to treat HER2-negative patients with Trastuzumab. We assume that there are either misclassifications or documentation errors in these three records.

Propensity score matching

A first patient characteristics analysis of the cohorts C-1 to C-3 revealed that there were differences with respect to the distribution of age, tumor sizes, hormone receptor status, etc. Therefore, we balanced cohorts C-1 to C-3 with the propensity score matching method [2]. For this step, we used the MatchIt-package for the statistical software R which implements the nearest neighbor method [3]. Cohort C-2 served as reference population for the matching process. After this step, every cohort comprised 138 cases.

Database extraction

Several health states (Disease free, Recurrence, Metastasis, Remission recurrence, Remission metastasis, Death) were defined beforehand according to a reference study by Blank et al. [4]. These definitions were used to automatically generate SQL (Structured Query Language) scripts which extracted the patients׳ events. Thus raw numbers for the occurrence of several events (or states), e.g., getting a metastasis or death, could be determined. For a detailed description on how disease state information were mapped against the local tumor documentation system, the generation of SQL scripts and the processing of the results please refer to the research article for this data article [5].

Estimation of transition probabilities

Based on the extracted health state information and the patients׳ transitions between these states, maximum likelihood estimation of the transition matrix for the probability of any shift was performed [6] and compared to probabilities used in the model generated by [4]. Thus, the transition probabilities presented in the Supplementary material (Table 1) of this article were calculated.
Subject areaMedicine
More specific subject areaOncology, Health Services Research
Type of dataTable
How data was acquiredRetrospective analysis
Database export of clinical cancer registry
Data formatFiltered
Experimental factorsSelection of matching cases from the cancer registry according to the study protocol by[1]
Experimental featuresData includes occurrences of disease events and calculated transition probabilities.
Data source locationCancer Center at SLK-Hospitals, Heilbronn, Germany
Data accessibilityData is with this article
  4 in total

1.  Estimation of the transition matrix of a discrete-time Markov chain.

Authors:  Bruce A Craig; Peter P Sendi
Journal:  Health Econ       Date:  2002-01       Impact factor: 3.046

2.  Human epidermal growth factor receptor 2 expression in early breast cancer patients: a Swiss cost-effectiveness analysis of different predictive assay strategies.

Authors:  Patricia R Blank; Matthias Schwenkglenks; Holger Moch; Thomas D Szucs
Journal:  Breast Cancer Res Treat       Date:  2010-04-03       Impact factor: 4.872

3.  A method for using real world data in breast cancer modeling.

Authors:  Monika Pobiruchin; Sylvia Bochum; Uwe M Martens; Meinhard Kieser; Wendelin Schramm
Journal:  J Biomed Inform       Date:  2016-02-08       Impact factor: 6.317

4.  Trastuzumab after adjuvant chemotherapy in HER2-positive breast cancer.

Authors:  Martine J Piccart-Gebhart; Marion Procter; Brian Leyland-Jones; Aron Goldhirsch; Michael Untch; Ian Smith; Luca Gianni; Jose Baselga; Richard Bell; Christian Jackisch; David Cameron; Mitch Dowsett; Carlos H Barrios; Günther Steger; Chiun-Shen Huang; Michael Andersson; Moshe Inbar; Mikhail Lichinitser; István Láng; Ulrike Nitz; Hiroji Iwata; Christoph Thomssen; Caroline Lohrisch; Thomas M Suter; Josef Rüschoff; Tamás Suto; Victoria Greatorex; Carol Ward; Carolyn Straehle; Eleanor McFadden; M Stella Dolci; Richard D Gelber
Journal:  N Engl J Med       Date:  2005-10-20       Impact factor: 91.245

  4 in total
  1 in total

Review 1.  Relevance of Circulating Tumor Cells as Predictive Markers for Cancer Incidence and Relapse.

Authors:  Chaithanya Chelakkot; Hobin Yang; Young Kee Shin
Journal:  Pharmaceuticals (Basel)       Date:  2022-01-06
  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.