| Literature DB >> 29570791 |
William S Dalton1, Daniel Sullivan2, Jeffrey Ecsedy3, Michael A Caligiuri4.
Abstract
Technological advances have led to the identification of biomarkers and development of novel target-based therapies. While some novel therapies have improved patient outcomes, the prevalence and diversity of biomarkers and targets in patient populations, especially patients with cancer, has created a challenge for the design and performance of clinical trials. To address this challenge we propose that prospective cohort surveillance of patients may be a solution to promote clinical trial matching for patients in need.Entities:
Mesh:
Year: 2018 PMID: 29570791 PMCID: PMC6032821 DOI: 10.1002/cpt.1051
Source DB: PubMed Journal: Clin Pharmacol Ther ISSN: 0009-9236 Impact factor: 6.875
Figure 1TCC protocol: Cohort surveillance to anticipate need.
Challenges associated with forming prospective patient cohorts to improve precision based clinical trials
| Challenges | Potential solutions |
|---|---|
| 1. Defining a patient's phenotype relies on accurate and standardized interpretation of unstructured data from diverse health records. Health records are primarily unstructured, making difficult the identification and transference of data that is necessary to match patients to clinical trials. | 1. Development of common data dictionaries and automated natural language processing (NLP) technologies are needed. |
| 2. Patient data must be secure, yet shared to achieve collaborative learning. Access and use of the data donated by patients requires a secure environment with sound governance to assure the data are being used in the patients' best interest. | 2. Use of honest brokers, limited datasets and deidentification allow compliance with HIPAA and FISMA while not overly restricting data aggregation and analysis. It will be important that regulations not be overly restrictive, making it difficult to access and aggregate data for analysis. |
| 3. Sound scientific oversight and measurements of quality of the data need to be in place to identify and recommend clinical trials for patients in need. | 3. Data quality standards must be established and automated so that data from disparate sources can be integrated for analysis and decision making. |
| 4. Communicating with patients who have consented to cohort surveillance and providing information to them in a meaningful and constructive way. | 4. Patients who consent to donate data and biospecimens may request results and reports of studies performed and this must be communicated in an understandable format with access to counseling to explain findings. |
| 5. Recognizing that patients' cancers genotypically evolve and are heterogeneous, how do we determine the current genomic state of a patient at the time of clinical trial enrollment? | 5. Performance of longitudinal assays, including liquid biopsies, may address the genotypic evolution of a patient's disease. Creating |
| 6. With advances in technology how do we integrate new “‐omic” analysis into the repertoire of studies of patients to better understand the disease? | 6. Integrating new “‐omic” technologies will enhance systems analysis but will also require prospective validation of new assays to determine the value of each. |
| 7. Creation of a national (global) infrastructure to share data from all networks involved in collecting and studying patient data will enable all stakeholders to access and learn from the data to better meet patient needs, including need for clinical trials. | 7. Development of a “network of networks” will require the development of data standards and tools that promote interoperability. |