TY - JOUR
T1 - Model for detecting metastatic deposits in lymph nodes of colorectal carcinoma on digital/ non-WSI images
AU - Zehra, Talat
AU - Moeen, Sarosh
AU - Shams, Mahin
AU - Raza, Muhammad
AU - Khurshid, Amna
AU - Jafri, Asad
AU - Abdul-Ghafar, Jamshid
N1 - Publisher Copyright:
© The Author(s) 2024.
PY - 2024/12
Y1 - 2024/12
N2 - Introduction: Colorectal cancer (CRC) constitutes around 10% of global cancer diagnoses and death due to cancer. Treatment involves the surgical resection of the tumor and regional lymph nodes. Assessment of multiple lymph node demands meticulous examination by skilled pathologists, which can be arduous, prompting consideration for an artificial intelligence (AI)-supported workflow due to the growing number of slides to be examined, demanding heightened precision and the global shortage of pathologists. Method: This was a retrospective cross-sectional study including digital images of glass slides containing sections of positive and negative lymph nodes obtained from radical resection of primary CRC. Lymph nodes from 165 previously diagnosed cases were selected from Agha Khan University Hospital, from Jan 2021 to Jan 2022. The images were prepared at 10X and uploaded into an open source software, Q path and deep learning model Ensemble was applied for the identification of tumor deposits in lymph node. Results: Out of the 87 positive lymph nodes detected by AI, 73(84%) were true positive and 14(16%) were false positive. The total number of negative lymph nodes detected by AI was 78. Out of these, 69(88.5%) were true negative and 9 (11.5%) were false negative. The sensitivity was 89% and specificity 83.1%. The odds ratio was 40 with a confidence interval of 16.26–98.3. P-value was < 0.05 (< 0.0001). Conclusion: Though it was a small study but its results were really appreciating and we encourage more such studies with big sample data in future.
AB - Introduction: Colorectal cancer (CRC) constitutes around 10% of global cancer diagnoses and death due to cancer. Treatment involves the surgical resection of the tumor and regional lymph nodes. Assessment of multiple lymph node demands meticulous examination by skilled pathologists, which can be arduous, prompting consideration for an artificial intelligence (AI)-supported workflow due to the growing number of slides to be examined, demanding heightened precision and the global shortage of pathologists. Method: This was a retrospective cross-sectional study including digital images of glass slides containing sections of positive and negative lymph nodes obtained from radical resection of primary CRC. Lymph nodes from 165 previously diagnosed cases were selected from Agha Khan University Hospital, from Jan 2021 to Jan 2022. The images were prepared at 10X and uploaded into an open source software, Q path and deep learning model Ensemble was applied for the identification of tumor deposits in lymph node. Results: Out of the 87 positive lymph nodes detected by AI, 73(84%) were true positive and 14(16%) were false positive. The total number of negative lymph nodes detected by AI was 78. Out of these, 69(88.5%) were true negative and 9 (11.5%) were false negative. The sensitivity was 89% and specificity 83.1%. The odds ratio was 40 with a confidence interval of 16.26–98.3. P-value was < 0.05 (< 0.0001). Conclusion: Though it was a small study but its results were really appreciating and we encourage more such studies with big sample data in future.
KW - Colorectal neoplasms
KW - Computer-assisted image analysis
KW - Deep learning
KW - Lymph nodes
UR - http://www.scopus.com/inward/record.url?scp=85204225721&partnerID=8YFLogxK
U2 - 10.1186/s13000-024-01547-5
DO - 10.1186/s13000-024-01547-5
M3 - Article
C2 - 39285483
AN - SCOPUS:85204225721
SN - 1746-1596
VL - 19
JO - Diagnostic Pathology
JF - Diagnostic Pathology
IS - 1
M1 - 125
ER -