TY - JOUR
T1 - Identifying gross post-mortem organ images using a pre-trained convolutional neural network
AU - Garland, Jack
AU - Hu, Mindy
AU - Kesha, Kilak
AU - Glenn, Charley
AU - Morrow, Paul
AU - Stables, Simon
AU - Ondruschka, Benjamin
AU - Tse, Rexson
PY - 2021
Y1 - 2021
N2 - Identifying organs/tissue and pathology on radiological and microscopic images can be performed using convolutional neural networks (CNN). However, there are scant studies on applying CNN to post-mortem gross images of visceral organs. This proof-of-concept study used 537 gross post-mortem images of dissected brain, heart, lung, liver, spleen, and kidney, which were randomly divided into a training and teaching datasets for the pre-trained CNN Xception. The CNN was trained using the training dataset and subsequently tested on the testing dataset. The overall accuracies were >95% percent for both training and testing datasets and have an F1 score of >0.95 for all dissected organs. This study showed that small datasets of post-mortem images can be classified with a very high accuracy using a pre-trained CNN. This novel area has the potential for future application in data mining, education and teaching, case review, research, quality assurance, auditing purposes, and identifying pathology.
AB - Identifying organs/tissue and pathology on radiological and microscopic images can be performed using convolutional neural networks (CNN). However, there are scant studies on applying CNN to post-mortem gross images of visceral organs. This proof-of-concept study used 537 gross post-mortem images of dissected brain, heart, lung, liver, spleen, and kidney, which were randomly divided into a training and teaching datasets for the pre-trained CNN Xception. The CNN was trained using the training dataset and subsequently tested on the testing dataset. The overall accuracies were >95% percent for both training and testing datasets and have an F1 score of >0.95 for all dissected organs. This study showed that small datasets of post-mortem images can be classified with a very high accuracy using a pre-trained CNN. This novel area has the potential for future application in data mining, education and teaching, case review, research, quality assurance, auditing purposes, and identifying pathology.
UR - https://hdl.handle.net/1959.7/uws:64826
U2 - 10.1111/1556-4029.14608
DO - 10.1111/1556-4029.14608
M3 - Article
SN - 0022-1198
VL - 66
SP - 630
EP - 635
JO - Journal of Forensic Sciences
JF - Journal of Forensic Sciences
IS - 2
ER -