arXiv Open Access 2021

Deep learning for detecting pulmonary tuberculosis via chest radiography: an international study across 10 countries

Sahar Kazemzadeh Jin Yu Shahar Jamshy Rory Pilgrim Zaid Nabulsi +19 lainnya
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Abstrak

Tuberculosis (TB) is a top-10 cause of death worldwide. Though the WHO recommends chest radiographs (CXRs) for TB screening, the limited availability of CXR interpretation is a barrier. We trained a deep learning system (DLS) to detect active pulmonary TB using CXRs from 9 countries across Africa, Asia, and Europe, and utilized large-scale CXR pretraining, attention pooling, and noisy student semi-supervised learning. Evaluation was on (1) a combined test set spanning China, India, US, and Zambia, and (2) an independent mining population in South Africa. Given WHO targets of 90% sensitivity and 70% specificity, the DLS's operating point was prespecified to favor sensitivity over specificity. On the combined test set, the DLS's ROC curve was above all 9 India-based radiologists, with an AUC of 0.90 (95%CI 0.87-0.92). The DLS's sensitivity (88%) was higher than the India-based radiologists (75% mean sensitivity), p<0.001 for superiority; and its specificity (79%) was non-inferior to the radiologists (84% mean specificity), p=0.004. Similar trends were observed within HIV positive and sputum smear positive sub-groups, and in the South Africa test set. We found that 5 US-based radiologists (where TB isn't endemic) were more sensitive and less specific than the India-based radiologists (where TB is endemic). The DLS also remained non-inferior to the US-based radiologists. In simulations, using the DLS as a prioritization tool for confirmatory testing reduced the cost per positive case detected by 40-80% compared to using confirmatory testing alone. To conclude, our DLS generalized to 5 countries, and merits prospective evaluation to assist cost-effective screening efforts in radiologist-limited settings. Operating point flexibility may permit customization of the DLS to account for site-specific factors such as TB prevalence, demographics, clinical resources, and customary practice patterns.

Topik & Kata Kunci

Penulis (24)

S

Sahar Kazemzadeh

J

Jin Yu

S

Shahar Jamshy

R

Rory Pilgrim

Z

Zaid Nabulsi

C

Christina Chen

N

Neeral Beladia

C

Charles Lau

S

Scott Mayer McKinney

T

Thad Hughes

A

Atilla Kiraly

S

Sreenivasa Raju Kalidindi

M

Monde Muyoyeta

J

Jameson Malemela

T

Ting Shih

G

Greg S. Corrado

L

Lily Peng

K

Katherine Chou

P

Po-Hsuan Cameron Chen

Y

Yun Liu

K

Krish Eswaran

D

Daniel Tse

S

Shravya Shetty

S

Shruthi Prabhakara

Format Sitasi

Kazemzadeh, S., Yu, J., Jamshy, S., Pilgrim, R., Nabulsi, Z., Chen, C. et al. (2021). Deep learning for detecting pulmonary tuberculosis via chest radiography: an international study across 10 countries. https://arxiv.org/abs/2105.07540

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Tahun Terbit
2021
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en
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arXiv
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Open Access ✓