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Implementation of Chemo and Anti-Neoplastic Extractor Cycle and Regimen Estimator (Cancer Care) in Follicular Lymphoma Patients Treated in VA
Rationale: Successfully extract, identify, and validate therapeutics lines used in the treatment of Veterans with follicular lymphoma.
Background: With the adoption of electronic health record (EHR) systems, leveraging this data is becoming increasingly important for clinical and observational research, especially in oncology, where precision oncology has become central to the Cancer Moonshot Initiative. One of the greatest challenges in using EHR data is extracting a cancer patient’s treatment history. The difficulty lies in identifying treatment “lines,” which may include one or more drugs, with each drug dispensation often recorded in an unstructured format within the EHR. Our objective was to conceptualize, develop, and validate an algorithm that reconstructs a cancer treatment line history using single-agent EHR pharmacy data in a cohort of follicular lymphoma patients treated in the Veterans Health Administration (VHA).
Methods: The CANCER CARE algorithm recreates and formalizes the heuristic a clinician uses to identify treatment lines dispensed using two inputs: (1) National Comprehensive Cancer Network treatment guidelines and the recommended chemotherapy lines and their comprising
antineoplastic agents that are used in the treatment of the cancer of interest; and (2) Single-agent dispensation information retrieved from the VA Corporate Data Warehouse. The algorithm uses rules to map concordant dispensation agents to a treatment line while taking into account common
practice variations such as omitted agents during the start or middle of a treatment line. It also identifies the initiation of a new line based on a change in agents received or time gaps between treatments. The algorithm was validated by comparing a set of 100 treatment lines that were independently annotated by a clinician in a cohort of patients with follicular lymphoma to the algorithm output. Accuracy, sensitivity, and precision were measured.
Results: CANCER CARE had an accuracy of 96%. Accuracy, sensitivity and precision for most prevalent lines were: 98%, 97% and 100% (rituximab), respectively; and 99%, 100%, and 95% (RCHOP), respectively. Accuracy, sensitivity, and precision for RCVP and BR were all 100%.
Conclusions: Cancer treatment line identification from EHR pharmacy dispensation data using a rule-based approach is feasible with high accuracy and can be used in real-world studies of cancer patient treatment practices and outcomes.
Rationale: Successfully extract, identify, and validate therapeutics lines used in the treatment of Veterans with follicular lymphoma.
Background: With the adoption of electronic health record (EHR) systems, leveraging this data is becoming increasingly important for clinical and observational research, especially in oncology, where precision oncology has become central to the Cancer Moonshot Initiative. One of the greatest challenges in using EHR data is extracting a cancer patient’s treatment history. The difficulty lies in identifying treatment “lines,” which may include one or more drugs, with each drug dispensation often recorded in an unstructured format within the EHR. Our objective was to conceptualize, develop, and validate an algorithm that reconstructs a cancer treatment line history using single-agent EHR pharmacy data in a cohort of follicular lymphoma patients treated in the Veterans Health Administration (VHA).
Methods: The CANCER CARE algorithm recreates and formalizes the heuristic a clinician uses to identify treatment lines dispensed using two inputs: (1) National Comprehensive Cancer Network treatment guidelines and the recommended chemotherapy lines and their comprising
antineoplastic agents that are used in the treatment of the cancer of interest; and (2) Single-agent dispensation information retrieved from the VA Corporate Data Warehouse. The algorithm uses rules to map concordant dispensation agents to a treatment line while taking into account common
practice variations such as omitted agents during the start or middle of a treatment line. It also identifies the initiation of a new line based on a change in agents received or time gaps between treatments. The algorithm was validated by comparing a set of 100 treatment lines that were independently annotated by a clinician in a cohort of patients with follicular lymphoma to the algorithm output. Accuracy, sensitivity, and precision were measured.
Results: CANCER CARE had an accuracy of 96%. Accuracy, sensitivity and precision for most prevalent lines were: 98%, 97% and 100% (rituximab), respectively; and 99%, 100%, and 95% (RCHOP), respectively. Accuracy, sensitivity, and precision for RCVP and BR were all 100%.
Conclusions: Cancer treatment line identification from EHR pharmacy dispensation data using a rule-based approach is feasible with high accuracy and can be used in real-world studies of cancer patient treatment practices and outcomes.
Rationale: Successfully extract, identify, and validate therapeutics lines used in the treatment of Veterans with follicular lymphoma.
Background: With the adoption of electronic health record (EHR) systems, leveraging this data is becoming increasingly important for clinical and observational research, especially in oncology, where precision oncology has become central to the Cancer Moonshot Initiative. One of the greatest challenges in using EHR data is extracting a cancer patient’s treatment history. The difficulty lies in identifying treatment “lines,” which may include one or more drugs, with each drug dispensation often recorded in an unstructured format within the EHR. Our objective was to conceptualize, develop, and validate an algorithm that reconstructs a cancer treatment line history using single-agent EHR pharmacy data in a cohort of follicular lymphoma patients treated in the Veterans Health Administration (VHA).
Methods: The CANCER CARE algorithm recreates and formalizes the heuristic a clinician uses to identify treatment lines dispensed using two inputs: (1) National Comprehensive Cancer Network treatment guidelines and the recommended chemotherapy lines and their comprising
antineoplastic agents that are used in the treatment of the cancer of interest; and (2) Single-agent dispensation information retrieved from the VA Corporate Data Warehouse. The algorithm uses rules to map concordant dispensation agents to a treatment line while taking into account common
practice variations such as omitted agents during the start or middle of a treatment line. It also identifies the initiation of a new line based on a change in agents received or time gaps between treatments. The algorithm was validated by comparing a set of 100 treatment lines that were independently annotated by a clinician in a cohort of patients with follicular lymphoma to the algorithm output. Accuracy, sensitivity, and precision were measured.
Results: CANCER CARE had an accuracy of 96%. Accuracy, sensitivity and precision for most prevalent lines were: 98%, 97% and 100% (rituximab), respectively; and 99%, 100%, and 95% (RCHOP), respectively. Accuracy, sensitivity, and precision for RCVP and BR were all 100%.
Conclusions: Cancer treatment line identification from EHR pharmacy dispensation data using a rule-based approach is feasible with high accuracy and can be used in real-world studies of cancer patient treatment practices and outcomes.
VA Symptom Assessment Scale (VSAS): Symptom Prevalence, Reliability and Internal Consistency
Purpose: Symptom assessment in cancer patients is associated with improved quality of life and prolonged survival; we sought to evaluate the use of a systematic symptom assessment tool in VA.
Background: Veterans Affairs (VA) Symptom Assessment Scale (VSAS) is a clinical tool for VA nurses and providers to capture symptom burden in patients with cancer. It includes 10 physical factors (pain, tiredness, anorexia, nausea, vomiting, diarrhea, constipation, shortness of breath at rest and with exertion, and drowsiness) and 3 emotional factors (depression, anxiety, and distress). Each symptom is scored on a scale of 0 (absence) to 10 (worst possible symptom). Here, we report symptom prevalence, VSAS reliability and internal consistency.
Methods: VSAS data were collected from the VA Corporate Data Warehouse. Symptom prevalence at baseline (initial hematology or oncology visit) and at subsequent follow-up is described. Reliability was assessed using factor-level test-retest correlation within a one week time period. Internal consistency and reliability of “physical” and “emotional” factors were assessed using Cronbach’s alpha.
Results: From January 2015 through June 2018, 5,995 patients were administered 21,761 VSAS assessments in two VA medical centers. At baseline, patients were most likely to report tiredness (68%), shortness of breath with exertion (49%), and pain (45%). Severe symptoms (scores 7-10) included tiredness (23%), pain (17%), and shortness of breath with exertion (13%). The most common symptoms recorded on follow-up were tiredness (70%; 21% severe), shortness of breath with exertion (51%; 17% severe), and pain (45%; 11% severe). Factor correlation upon retesting within one week was moderate, ranging from 0.40 to 0.62. Internal consistency across all factors was high with a Cronbach alpha of 0.86. Internal reliability of physical and emotional symptoms was also high at 0.81 and 0.87, respectively.
Conclusions: Cancer patients treated in the VA have a high symptom burden. The most prevalent symptoms were pain, tiredness, and shortness of breath. We evaluated reliability and consistency of VSAS factors, validating this method of measuring and documenting cancer-related symptoms. This preliminary report establishes VSAS as a tool that can be implemented widely within the VA with the goal of improving quality of care in VA oncology patients.
Purpose: Symptom assessment in cancer patients is associated with improved quality of life and prolonged survival; we sought to evaluate the use of a systematic symptom assessment tool in VA.
Background: Veterans Affairs (VA) Symptom Assessment Scale (VSAS) is a clinical tool for VA nurses and providers to capture symptom burden in patients with cancer. It includes 10 physical factors (pain, tiredness, anorexia, nausea, vomiting, diarrhea, constipation, shortness of breath at rest and with exertion, and drowsiness) and 3 emotional factors (depression, anxiety, and distress). Each symptom is scored on a scale of 0 (absence) to 10 (worst possible symptom). Here, we report symptom prevalence, VSAS reliability and internal consistency.
Methods: VSAS data were collected from the VA Corporate Data Warehouse. Symptom prevalence at baseline (initial hematology or oncology visit) and at subsequent follow-up is described. Reliability was assessed using factor-level test-retest correlation within a one week time period. Internal consistency and reliability of “physical” and “emotional” factors were assessed using Cronbach’s alpha.
Results: From January 2015 through June 2018, 5,995 patients were administered 21,761 VSAS assessments in two VA medical centers. At baseline, patients were most likely to report tiredness (68%), shortness of breath with exertion (49%), and pain (45%). Severe symptoms (scores 7-10) included tiredness (23%), pain (17%), and shortness of breath with exertion (13%). The most common symptoms recorded on follow-up were tiredness (70%; 21% severe), shortness of breath with exertion (51%; 17% severe), and pain (45%; 11% severe). Factor correlation upon retesting within one week was moderate, ranging from 0.40 to 0.62. Internal consistency across all factors was high with a Cronbach alpha of 0.86. Internal reliability of physical and emotional symptoms was also high at 0.81 and 0.87, respectively.
Conclusions: Cancer patients treated in the VA have a high symptom burden. The most prevalent symptoms were pain, tiredness, and shortness of breath. We evaluated reliability and consistency of VSAS factors, validating this method of measuring and documenting cancer-related symptoms. This preliminary report establishes VSAS as a tool that can be implemented widely within the VA with the goal of improving quality of care in VA oncology patients.
Purpose: Symptom assessment in cancer patients is associated with improved quality of life and prolonged survival; we sought to evaluate the use of a systematic symptom assessment tool in VA.
Background: Veterans Affairs (VA) Symptom Assessment Scale (VSAS) is a clinical tool for VA nurses and providers to capture symptom burden in patients with cancer. It includes 10 physical factors (pain, tiredness, anorexia, nausea, vomiting, diarrhea, constipation, shortness of breath at rest and with exertion, and drowsiness) and 3 emotional factors (depression, anxiety, and distress). Each symptom is scored on a scale of 0 (absence) to 10 (worst possible symptom). Here, we report symptom prevalence, VSAS reliability and internal consistency.
Methods: VSAS data were collected from the VA Corporate Data Warehouse. Symptom prevalence at baseline (initial hematology or oncology visit) and at subsequent follow-up is described. Reliability was assessed using factor-level test-retest correlation within a one week time period. Internal consistency and reliability of “physical” and “emotional” factors were assessed using Cronbach’s alpha.
Results: From January 2015 through June 2018, 5,995 patients were administered 21,761 VSAS assessments in two VA medical centers. At baseline, patients were most likely to report tiredness (68%), shortness of breath with exertion (49%), and pain (45%). Severe symptoms (scores 7-10) included tiredness (23%), pain (17%), and shortness of breath with exertion (13%). The most common symptoms recorded on follow-up were tiredness (70%; 21% severe), shortness of breath with exertion (51%; 17% severe), and pain (45%; 11% severe). Factor correlation upon retesting within one week was moderate, ranging from 0.40 to 0.62. Internal consistency across all factors was high with a Cronbach alpha of 0.86. Internal reliability of physical and emotional symptoms was also high at 0.81 and 0.87, respectively.
Conclusions: Cancer patients treated in the VA have a high symptom burden. The most prevalent symptoms were pain, tiredness, and shortness of breath. We evaluated reliability and consistency of VSAS factors, validating this method of measuring and documenting cancer-related symptoms. This preliminary report establishes VSAS as a tool that can be implemented widely within the VA with the goal of improving quality of care in VA oncology patients.