2018
DOI: 10.1007/s00761-018-0358-3
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Real-world evidence research based on big data

Abstract: BackgroundIn recent years there has been an increasing, partially also critical interest in understanding the potential benefits of generating real-world evidence (RWE) in medicine.ObjectivesThe benefits and limitations of RWE in the context of randomized controlled trials (RCTs) are described along with a view on how they may complement each other as partners in the generation of evidence for clinical oncology. Moreover, challenges and success factors in building an effective RWE network of cooperating cancer… Show more

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Cited by 64 publications
(49 citation statements)
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“…55 While most traditional data processing and analysis tools applicable to RWD can be used to identify and reduce the impact of some of the limitations inherent in real-world studies, such as potential confounding factors, real-world datasets require development of new methodologies or applications to unlock their full potential. 9,11,97 The growth of machine learning and the application of natural language processing to RWD will bring additional opportunities in the future, enabling even more meaningful outcomes to be elucidated from the wealth of available RWD. 9 Machine learning techniques have already been used to enhance the prediction accuracy of algorithms to identify women with early and advanced stage breast cancer in a claims database using predictive modeling.…”
Section: Gastroentereopancreatic Neuroendocrine Tumors (Fda 2018)mentioning
confidence: 99%
See 1 more Smart Citation
“…55 While most traditional data processing and analysis tools applicable to RWD can be used to identify and reduce the impact of some of the limitations inherent in real-world studies, such as potential confounding factors, real-world datasets require development of new methodologies or applications to unlock their full potential. 9,11,97 The growth of machine learning and the application of natural language processing to RWD will bring additional opportunities in the future, enabling even more meaningful outcomes to be elucidated from the wealth of available RWD. 9 Machine learning techniques have already been used to enhance the prediction accuracy of algorithms to identify women with early and advanced stage breast cancer in a claims database using predictive modeling.…”
Section: Gastroentereopancreatic Neuroendocrine Tumors (Fda 2018)mentioning
confidence: 99%
“…[6][7][8][9] The definitions of RWD and RWE are relatively consistent between key regulatory agencies (see Table 1). 7,8,10 While RWE from observational studies is well accepted for post-approval safety monitoring and to answer pharmacoeconomic questions 3,11,12 its contribution to regulatory decisions around effectiveness has been more limited.…”
Section: Introductionmentioning
confidence: 99%
“…A strength of our study was that we assessed real-world patient outcomes of patients with advanced breast cancer (i.e., women with HR+/HER2− advanced breast cancer receiving an initial ET-based regimen for advanced disease) across five European countries using a variety of well-validated standard PRO instruments, including the frequently used EORTC QLQ-C30. Real-world data complement clinical trial data to help inform patient care [ 50 ]. PRO measures are increasingly being used in clinical trials and are broadly applicable in both clinical research and daily clinical practice; they can be used to support decision making by regulators, payers, healthcare providers, and patients [ 51 ].…”
Section: Discussionmentioning
confidence: 99%
“…We believe that the Real-World Data (RWD) utilized more in recent years would help resolve the deviation from the approved dose and lead to a prompt delivery of information on the optimized dose for each pharmaceutical product. Real-world evidence accumulates clinical evidence based on the actual use of drugs after marketing and will therefore, compensate for the limited information obtained before approval [18,19]. We can utilize RWD to identify patient backgrounds with lower-dose prescriptions and plan post-marketing clinical trials to clarify benefit/risk balance using lower dose for those specific populations, if necessary.…”
Section: Discussionmentioning
confidence: 99%