| Literature DB >> 30284153 |
Stefan Jaeger1, Octavio H Juarez-Espinosa2, Sema Candemir3, Mahdieh Poostchi3, Feng Yang3,4, Lewis Kim2, Meng Ding5, Les R Folio6, Sameer Antani3, Andrei Gabrielian2, Darrell Hurt2, Alex Rosenthal2, George Thoma3.
Abstract
PURPOSE: Tuberculosis is a major global health threat claiming millions of lives each year. While the total number of tuberculosis cases has been decreasing over the last years, the rise of drug-resistant tuberculosis has reduced the chance of controlling the disease. The purpose is to implement a timely diagnosis of drug-resistant tuberculosis, which is essential to administering adequate treatment regimens and stopping the further transmission of drug-resistant tuberculosis.Entities:
Keywords: Biomedical imaging; Computer-aided diagnosis; Drug resistance; Machine learning; Tuberculosis
Mesh:
Year: 2018 PMID: 30284153 PMCID: PMC6223762 DOI: 10.1007/s11548-018-1857-9
Source DB: PubMed Journal: Int J Comput Assist Radiol Surg ISSN: 1861-6410 Impact factor: 2.924
Exp. 1—Belarus CXRs stratified by age, gender, and type of resistance
| Age | Sensitive | MDR | ||
|---|---|---|---|---|
| Male | Female | Male | Female | |
|
| 22 | 15 | 26 | 20 |
|
| 12 | 12 | 20 | 8 |
Exp. 2—Belarus CXRs and follow-ups stratified by age, gender, and type of resistance
| Age | Sensitive | MDR | ||
|---|---|---|---|---|
| Male | Female | Male | Female | |
|
| 72 | 36 | 62 | 47 |
|
| 22 | 27 | 45 | 16 |
Number of CXRs per patient
| Sensitive | MDR | |
|---|---|---|
| Maximum number of CXRs | 23 | 17 |
| Minimum number of CXRs | 1 | 1 |
| Mean | 3.9 | 2.6 |
| SD | 3.5 | 2.3 |
Time gaps between CXRs
| Gap | Sensitive (days) | MDR (days) |
|---|---|---|
| Mean | 44.5 | 38.4 |
| SD | 39.9 | 26.9 |
| Min | 1 | 1 |
| Max | 146 | 139 |
Frequency of treatment regimens among sensitive TB cases
| Treatment regimen | Frequency |
|---|---|
| Ethambutol (e) | 61 |
| Isoniazid (h) | 61 |
| Rifampicin (r) | 61 |
| Pyrazinamide (z) | 61 |
Frequency of treatment regimens among MDR-TB patients
| Treatment regimen | Frequency |
|---|---|
| Amikacin (am) | 11 |
| Amoxicillin/clavulanate (amx_clv) | 7 |
| Capreomycin (cm) | 52 |
| Cotrimoxazol (c) | 2 |
| Cycloserine (cs) | 70 |
| Ethambutol (e) | 7 |
| Isoniazid (h) | 2 |
| Kanamycin (km) | 9 |
| Levofloxacin (lfx) | 60 |
| Linezolid (lzd) | 1 |
| Moxifloxacin (mfx) | 3 |
| Ofloxacin (ofx) | 9 |
| p-aminosalicylic acid (pas) | 63 |
| Protionamide (pto) | 71 |
| Rifampicin (r) | 2 |
| Pyrazinamide (z) | 53 |
Fig. 1Two CXRs with their detected lung boundaries
Fig. 2PHoG feature computation for CXR
Fig. 3Our customized CNN architecture for chest CXR classification. The numbers above the cuboid indicate the dimensions of the feature maps. The numbers below the green dotted lines represent the convolutional kernel size and the size of the max-pooling region. The output layer is a softmax layer that predicts the probability of drug sensitivity
Area under the ROC curve (AUC) computed for six different classification methods using fivefold cross-evaluation
| Experiment 1 (%) | Experiment 2 (%) | |
|---|---|---|
| ANN_Shape_Texture_Fts | 65 | 66 |
| CNN | 56 | 62 |
| SVM_Shape_Texture_Fts | 57 | 58 |
| ANN_PHoG | 55 | 59 |
| SVM_PHoG | 50 | 61 |
| VGG-v16 | 52 | 57 |
Accuracy and for the ANN classifier and fivefold cross-evaluation
| Experiment one | Experiment two | |||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| TP | FP | TN | FN | Accuracy |
| TP | FP | TN | FN | Accuracy |
| |
| Fold 1 | 14 | 1 | 7 | 5 | 0.78 | 0.82 | 29 | 12 | 19 | 8 | 0.71 | 0.74 |
| Fold 2 | 7 | 8 | 6 | 6 | 0.48 | 0.50 | 19 | 15 | 17 | 10 | 0.59 | 0.60 |
| Fold 3 | 6 | 8 | 7 | 6 | 0.48 | 0.46 | 13 | 17 | 33 | 8 | 0.65 | 0.51 |
| Fold 4 | 10 | 5 | 9 | 3 | 0.70 | 0.71 | 23 | 11 | 19 | 17 | 0.60 | 0.62 |
| Fold 5 | 9 | 6 | 6 | 6 | 0.56 | 0.60 | 16 | 15 | 16 | 10 | 0.56 | 0.56 |
| Total/avg | 46 | 28 | 35 | 26 | 0.60 (avg) | 0.62 (avg) | 100 | 70 | 104 | 53 | 0.62 (avg) | 0.61 (avg) |
Fig. 4ROC curves for drug-sensitive TB vs MDR-TB classification without (left) and with follow-up CXRs (right) using ANN with shape and texture features
ANN performance evaluation using texture and shape features for Experiment 1, with data stratified according to age and gender
| #images | AUC (%) | ACC (%) | |
|---|---|---|---|
| Exp. 1 (ANN | |||
| Female | 55 | 60 | 58 |
| Male | 80 | 63 | 56 |
| | 83 | 61 | 55 |
| | 52 | 71 | 66 |
ANN performance evaluation using texture and shape features for Experiment 2, with data stratified according to age and gender
| #images | AUC (%) | ACC (%) | |
|---|---|---|---|
| Exp. 2 (ANN | |||
| Female | 126 | 61 | 55 |
| Male | 201 | 71 | 66 |
| | 217 | 68 | 60 |
| | 110 | 57 | 55 |