| Literature DB >> 30546259 |
Danielle Abatemarco1, Sujan Perera2, Sheng Hua Bao2, Sameen Desai1, Bruno Assuncao1, Niki Tetarenko1, Karolina Danysz1, Ruta Mockute1, Mark Widdowson1, Nicole Fornarotto1, Sheryl Beauchamp1, Salvatore Cicirello1, Edward Mingle1.
Abstract
INTRODUCTION: Regulations are increasing the scope of activities that fall under the remit of drug safety. Currently, individual case safety report (ICSR) collection and collation is done manually, requiring pharmacovigilance professionals to perform many transactional activities before data are available for assessment and aggregated analyses. For a biopharmaceutical company to meet its responsibilities to patients and regulatory bodies regarding the safe use and distribution of its products, improved business processes must be implemented to drive the industry forward in the best interest of patients globally. Augmented intelligent capabilities have already demonstrated success in capturing adverse events from diverse data sources. It has potential to provide a scalable solution for handling the ever-increasing ICSR volumes experienced within the industry by supporting pharmacovigilance professionals' decision-making.Entities:
Year: 2018 PMID: 30546259 PMCID: PMC6267537 DOI: 10.1007/s40290-018-0251-9
Source DB: PubMed Journal: Pharmaceut Med ISSN: 1178-2595
Fig. 1The scalable transcription and annotation workflow to produce an annotated corpus from which cognitive services can be trained in the pharmacovigilance domain. PV pharmacovigilance, SME subject-matter expert
Fig. 2A section of the metadata sheet, an output of the current safety database, which contains the data elements to be annotated within each version of the cases comprising the annotated corpus
Fig. 3An example of annotation labels applied within a portion of a transcribed source document
The ten cognitive services for spontaneous individual case safety report processing under development in this study with their corresponding service type
| Cognitive service | Service type |
|---|---|
| Adverse event detection | Entity extraction |
| Drug detection | Entity extraction |
| Reporter detection | Entity extraction |
| Patient detection | Entity extraction |
| Validity classifier | Classifier |
| Seriousness classifier | Classifier |
| Reporter causality classifier | Classifier |
| Expectedness classifier | Classifier |
| MedDRA coding | Classifier |
| WHO-DD coding | Classifier |
MedDRA Medical Dictionary for Regulatory Activities, WHO-DD World Health Organization Drug Dictionary
Table of confusion depicting the determination of true positive, false positive, true negative, and false negative for use in calculating the F1 and accuracy measures
| Ground-truth | Predicted | |
|---|---|---|
| Positive | Negative | |
| Positive | True positive | False negative |
| Negative | False positive | True negative |
The ten cognitive services for spontaneous individual case safety report processing with their corresponding evaluative measure and score following model training and tuning
| Cognitive service | Evaluation measure | Evaluation score |
|---|---|---|
| Adverse event detection | 75.6 | |
| Drug detection | 90 | |
| Reporter detection | 94.99 | |
| Patient detection | 79 | |
| Validity classifier | Binary accuracy | 98.40% |
| Seriousness classifier | Binary accuracy | 83% |
| Reporter causality classifier | Accuracy | 78.43% |
| Expectedness classifier | Binary accuracy | 92.50% |
| MedDRA coding | Top-5 accuracy | 92% |
| WHO-DD coding | Top-5 accuracy | 98% |
MedDRA Medical Dictionary for Regulatory Activities, WHO-DD World Health Organization Drug Dictionary
| Augmented intelligence may be the key to lightening the overwhelming workload and cognitive burden placed on pharmacovigilance professionals today. |
| Transcription and annotation of source documents is a scalable process to create an annotated corpus from which cognitive modules may be trained. |
| Feedback-driven training of deep-learning algorithms with a pharmacovigilance subject-matter expert’s guidance has proven successful in training a consortium of cognitive services for individual case safety report processing. |