| Literature DB >> 30253764 |
Katherine Torres1, Christine M Bachman2, Charles B Delahunt3, Jhonatan Alarcon Baldeon1, Freddy Alava1, Dionicia Gamboa Vilela1, Stephane Proux4, Courosh Mehanian3, Shawn K McGuire3, Clay M Thompson3, Travis Ostbye3, Liming Hu3, Mayoore S Jaiswal3, Victoria M Hunt3, David Bell3.
Abstract
BACKGROUND: Microscopic examination of Giemsa-stained blood films remains a major form of diagnosis in malaria case management, and is a reference standard for research. However, as with other visualization-based diagnoses, accuracy depends on individual technician performance, making standardization difficult and reliability poor. Automated image recognition based on machine-learning, utilizing convolutional neural networks, offers potential to overcome these drawbacks. A prototype digital microscope device employing an algorithm based on machine-learning, the Autoscope, was assessed for its potential in malaria microscopy. Autoscope was tested in the Iquitos region of Peru in 2016 at two peripheral health facilities, with routine microscopy and PCR as reference standards. The main outcome measures include sensitivity and specificity of diagnosis of malaria from Giemsa-stained blood films, using PCR as reference.Entities:
Keywords: Artificial intelligence; Convolutional neural networks; Digital microscopy; Malaria; Microscopy
Mesh:
Year: 2018 PMID: 30253764 PMCID: PMC6157053 DOI: 10.1186/s12936-018-2493-0
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Fig. 1Typical thick film microscope images. a A field-of-view image containing only two parasites, indicated by yellow circles with enlargements. b Malaria parasites ring forms. c Malaria parasite late stages
Fig. 2Flow chart of samples from study participants
Fig. 3Number of slides with counts above minimum WBC count thresholds, sorted by clinic
Fig. 4Flow chart of samples per clinic and results of microscopy vs. Autoscope using PCR as a reference
Microscopy diagnostic performance vs. PCR
| n slides (pos, neg) | Diagnostic performance % (95% CI) | |||||
|---|---|---|---|---|---|---|
| Sensitivity | Specificity | PPV | NPV | Accuracy | ||
| San Juan | ||||||
| ll species | 300 (123, 177) | 68 (59–76) | 100 (98–100) | 100 (96–100) | 82 (76–87) | 87 (83–91) |
|
| 300 (102, 198) | 70 (60–78) | 100 (98–100) | 100 (95–100) | 86 (81–91) | 90 (86–93) |
|
| 300 (21, 279) | 62 (38–82) | 100 (99–100) | 100 (75–100) | 97 (95–99) | 97 (95–99) |
| Santa Clara | ||||||
| All speciesa | 400 (151, 249) | 42 (34–51) | 97 (94–99) | 90 (81–96) | 74 (68–78) | 77 (72–81) |
|
| 400 (100, 300) | 46 (36–56) | 98 (96–99) | 88 (77–96) | 84 (80–88) | 85 (81–88) |
|
| 400 (52, 348) | 31 (19–45) | 100 (99–100) | 100 (79–100) | 91 (87–93) | 91 (88–94) |
Results for microscopy, separated by clinic. Sensitivity was stronger on San Juan slides. Specificity was strong on slides from both clinics
aOne mixed species sample was detected
Autoscope diagnostic performance vs. PCR
| n slides (pos, neg) | Diagnostic performance % (95% CI) | |||||
|---|---|---|---|---|---|---|
| Sensitivity | Specificity | PPV | NPV | Accuracy | ||
| San Juan | ||||||
| All species | 300 (123, 177) | 72 (64–80) | 85 (79–90) | 77 (68–84) | 82 (75–87) | 80 (75–84) |
|
| 300 (102, 198) | 72 (62–80) | 83 (77–88) | 69 (59–77) | 85 (79–90) | 79 (74–83) |
|
| 300 (21, 279) | 33 (15–57) | 99 (97–100) | 78 (40–97) | 95 (92–97) | 95 (91–97) |
| Santa Clara | ||||||
| All speciesa | 400 (151, 249) | 52 (44–60) | 70 (64–76) | 52 (43–59) | 71 (65–76) | 64 (58–68) |
|
| 400 (100, 300) | 60 (50–70) | 71 (66–76) | 41 (33–49) | 84 (79–89) | 69 (64–73) |
|
| 400 (52, 348) | 4 (0–13) | 99 (98–100) | 50 (7–93) | 87 (84–90) | 87 (83–90) |
Results for autoscope on all slides, separated by clinic
aOnly one mixed species sample was detected
Fig. 5Autoscope sensitivity and specificity for all species, using PCR reference, vs. WBC count threshold
Fig. 6Linear regression of log-transformed parasitaemia quantitated by Autoscope vs. microscopy on true positive slides, sorted by clinic