| Literature DB >> 32293426 |
Hsien-Wei Ting1,2, Sheng-Luen Chung3, Chih-Fang Chen4, Hsin-Yi Chiu3, Yow-Wen Hsieh5.
Abstract
BACKGROUND: Issuing of correct prescriptions is a foundation of patient safety. Medication errors represent one of the most important problems in health care, with 'look-alike and sound-alike' (LASA) being the lead error. Existing solutions to prevent LASA still have their limitations. Deep learning techniques have revolutionized identification classifiers in many fields. In search of better image-based solutions for blister package identification problem, this study using a baseline deep learning drug identification (DLDI) aims to understand how identification confusion of look-alike images by human occurs through the cognitive counterpart of deep learning solutions and thereof to suggest further solutions to approach them.Entities:
Keywords: Deep learning; Drug identification; Look-alike and sound-alike (lasa); Medication error; Patient safety
Year: 2020 PMID: 32293426 PMCID: PMC7158008 DOI: 10.1186/s12913-020-05166-w
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Fig. 1Excluded drug packages. Six classes of drug packaging were excluded: clip chain bags, powder bags, foil packaging bags, transparent bags, paper packages, and bottle packaging
Fig. 2Photographs from different angles. Different angles were employed for the camera to focus on, with different rotation directions of the drug packaging. Both front-side and back-side images were obtained for each type of drug
Training and testing rules of the deep learning network
| Size of input image | Adjusted to 224 × 224 pixels |
|---|---|
| Network built-in data augmentation function | disabled |
| Pre-trained model | no |
| Batch size | 8 |
| Highest number of training Epochs | 100 Epochs (168,800 iterations) |
| Training weight file storage timing | 1 Epoch (1688 iterations) |
Three drugs as an example of a confusion matrix
| Predicted class | Drug A | Drug B | Drug C |
|---|---|---|---|
| Actual class | |||
| Drug A | 6 | 3 | 0 |
| Drug B | 2 | 3 | 1 |
| Drug C | 0 | 1 | 12 |
YOLO v2 experimental results
| Image type | Experiment 1 (Front-side) | Experiment 2 (Back-side) |
|---|---|---|
| Training time | 5 h 34 mins | 7 h 42 mins |
| Epochs | 60 | 65 |
| Precision | 94.09% | 96.26% |
| Recall | 94.44% | 96.63% |
| F1 score | 93.72% | 95.99% |
Fig. 3YOLO v2 testing line chart. The F1 score and the correctness rate of identification increased as the number of training Epochs increased; a plateau was then reached when the Epoch number was larger than 8–10, irrespective of front-side or back-side model
Fig. 4Front and back images of blister packages that were misidentified using the models. The identification results were recorded in confusion matrixes for each model. RITALIN (METHYLPHENIDATE) (a) was misidentified as amBROXOL (MUSCO) (b) and ATENOLOL (UROSIN) (c) was misidentified as DIHYDROEROGOTOXINE (d) in the front-side model, while Ciprofloxacin (e) was misidentified as URSOdeoxycholic acid (Fig. 4f) and Alprazolam (g) was misidentified as Rivotril (CLONAZEPAM) (h) in the back-side model.