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Thyroid Cytopathology Cancer Diagnosis from Smartphone Images Using Machine Learning.

Publication ,  Journal Article
Assaad, S; Dov, D; Davis, R; Kovalsky, S; Lee, WT; Kahmke, R; Rocke, D; Cohen, J; Henao, R; Carin, L; Range, DE
Published in: Mod Pathol
June 2023

We examined the performance of deep learning models on the classification of thyroid fine-needle aspiration biopsies using microscope images captured in 2 ways: with a high-resolution scanner and with a mobile phone camera. Our training set consisted of images from 964 whole-slide images captured with a high-resolution scanner. Our test set consisted of 100 slides; 20 manually selected regions of interest (ROIs) from each slide were captured in 2 ways as mentioned above. Applying a baseline machine learning algorithm trained on scanner ROIs resulted in performance deterioration when applied to the smartphone ROIs (97.8% area under the receiver operating characteristic curve [AUC], CI = [95.4%, 100.0%] for scanner images vs 89.5% AUC, CI = [82.3%, 96.6%] for mobile images, P = .019). Preliminary analysis via histogram matching showed that the baseline model was overly sensitive to slight color variations in the images (specifically, to color differences between mobile and scanner images). Adding color augmentation during training reduces this sensitivity and narrows the performance gap between mobile and scanner images (97.6% AUC, CI = [95.0%, 100.0%] for scanner images vs 96.0% AUC, CI = [91.8%, 100.0%] for mobile images, P = .309), with both modalities on par with human pathologist performance (95.6% AUC, CI = [91.6%, 99.5%]) for malignancy prediction (P = .398 for pathologist vs scanner and P = .875 for pathologist vs mobile). For indeterminate cases (pathologist-assigned Bethesda category of 3, 4, or 5), color augmentations confer some improvement (88.3% AUC, CI = [73.7%, 100.0%] for the baseline model vs 96.2% AUC, CI = [90.9%, 100.0%] with color augmentations, P = .158). In addition, we found that our model's performance levels off after 15 ROIs, a promising indication that ROI data collection would not be time-consuming for our diagnostic system. Finally, we showed that the model has sensible Bethesda category (TBS) predictions (increasing risk malignancy rate with predicted TBS category, with 0% malignancy for predicted TBS 2 and 100% malignancy for TBS 6).

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Published In

Mod Pathol

DOI

EISSN

1530-0285

Publication Date

June 2023

Volume

36

Issue

6

Start / End Page

100129

Location

United States

Related Subject Headings

  • Thyroid Neoplasms
  • Smartphone
  • Pathology
  • Machine Learning
  • Humans
  • Cytology
  • 3202 Clinical sciences
  • 11 Medical and Health Sciences
 

Citation

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Assaad, S., Dov, D., Davis, R., Kovalsky, S., Lee, W. T., Kahmke, R., … Range, D. E. (2023). Thyroid Cytopathology Cancer Diagnosis from Smartphone Images Using Machine Learning. Mod Pathol, 36(6), 100129. https://doi.org/10.1016/j.modpat.2023.100129
Assaad, Serge, David Dov, Richard Davis, Shahar Kovalsky, Walter T. Lee, Russel Kahmke, Daniel Rocke, et al. “Thyroid Cytopathology Cancer Diagnosis from Smartphone Images Using Machine Learning.Mod Pathol 36, no. 6 (June 2023): 100129. https://doi.org/10.1016/j.modpat.2023.100129.
Assaad S, Dov D, Davis R, Kovalsky S, Lee WT, Kahmke R, et al. Thyroid Cytopathology Cancer Diagnosis from Smartphone Images Using Machine Learning. Mod Pathol. 2023 Jun;36(6):100129.
Assaad, Serge, et al. “Thyroid Cytopathology Cancer Diagnosis from Smartphone Images Using Machine Learning.Mod Pathol, vol. 36, no. 6, June 2023, p. 100129. Pubmed, doi:10.1016/j.modpat.2023.100129.
Assaad S, Dov D, Davis R, Kovalsky S, Lee WT, Kahmke R, Rocke D, Cohen J, Henao R, Carin L, Range DE. Thyroid Cytopathology Cancer Diagnosis from Smartphone Images Using Machine Learning. Mod Pathol. 2023 Jun;36(6):100129.

Published In

Mod Pathol

DOI

EISSN

1530-0285

Publication Date

June 2023

Volume

36

Issue

6

Start / End Page

100129

Location

United States

Related Subject Headings

  • Thyroid Neoplasms
  • Smartphone
  • Pathology
  • Machine Learning
  • Humans
  • Cytology
  • 3202 Clinical sciences
  • 11 Medical and Health Sciences