TY - JOUR
T1 - Comparative analysis of the spatial distribution of brain metastases across several primary cancers using machine learning and deep learning models
AU - Mahmoodifar, Saeedeh
AU - Pangal, Dhiraj J.
AU - Neman, Josh
AU - Zada, Gabriel
AU - Mason, Jeremy
AU - Salhia, Bodour
AU - Kaisman-Elbaz, Tehila
AU - Peker, Selcuk
AU - Samanci, Yavuz
AU - Hamel, Andréanne
AU - Mathieu, David
AU - Tripathi, Manjul
AU - Sheehan, Jason
AU - Pikis, Stylianos
AU - Mantziaris, Georgios
AU - Newton, Paul K.
N1 - Publisher Copyright:
© The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature 2024.
PY - 2024/5/1
Y1 - 2024/5/1
N2 - Objective: Brain metastases (BM) are associated with poor prognosis and increased mortality rates, making them a significant clinical challenge. Studying BMs can aid in improving early detection and monitoring. Systematic comparisons of anatomical distributions of BM from different primary cancers, however, remain largely unavailable. Methods: To test the hypothesis that anatomical BM distributions differ based on primary cancer type, we analyze the spatial coordinates of BMs for five different primary cancer types along principal component (PC) axes. The dataset includes 3949 intracranial metastases, labeled by primary cancer types and with six features. We employ PC coordinates to highlight the distinctions between various cancer types. We utilized different Machine Learning (ML) algorithms (RF, SVM, TabNet DL) models to establish the relationship between primary cancer diagnosis, spatial coordinates of BMs, age, and target volume. Results: Our findings revealed that PC1 aligns most with the Y axis, followed by the Z axis, and has minimal correlation with the X axis. Based on PC1 versus PC2 plots, we identified notable differences in anatomical spreading patterns between Breast and Lung cancer, as well as Breast and Renal cancer. In contrast, Renal and Lung cancer, as well as Lung and Melanoma, showed similar patterns. Our ML and DL results demonstrated high accuracy in distinguishing BM distribution for different primary cancers, with the SVM algorithm achieving 97% accuracy using a polynomial kernel and TabNet achieving 96%. The RF algorithm ranked PC1 as the most important discriminating feature. Conclusions: In summary, our results support accurate multiclass ML classification regarding brain metastases distribution.
AB - Objective: Brain metastases (BM) are associated with poor prognosis and increased mortality rates, making them a significant clinical challenge. Studying BMs can aid in improving early detection and monitoring. Systematic comparisons of anatomical distributions of BM from different primary cancers, however, remain largely unavailable. Methods: To test the hypothesis that anatomical BM distributions differ based on primary cancer type, we analyze the spatial coordinates of BMs for five different primary cancer types along principal component (PC) axes. The dataset includes 3949 intracranial metastases, labeled by primary cancer types and with six features. We employ PC coordinates to highlight the distinctions between various cancer types. We utilized different Machine Learning (ML) algorithms (RF, SVM, TabNet DL) models to establish the relationship between primary cancer diagnosis, spatial coordinates of BMs, age, and target volume. Results: Our findings revealed that PC1 aligns most with the Y axis, followed by the Z axis, and has minimal correlation with the X axis. Based on PC1 versus PC2 plots, we identified notable differences in anatomical spreading patterns between Breast and Lung cancer, as well as Breast and Renal cancer. In contrast, Renal and Lung cancer, as well as Lung and Melanoma, showed similar patterns. Our ML and DL results demonstrated high accuracy in distinguishing BM distribution for different primary cancers, with the SVM algorithm achieving 97% accuracy using a polynomial kernel and TabNet achieving 96%. The RF algorithm ranked PC1 as the most important discriminating feature. Conclusions: In summary, our results support accurate multiclass ML classification regarding brain metastases distribution.
KW - Brain metastases
KW - Deep learning models
KW - Pan cancer analysis
KW - Principal components
UR - http://www.scopus.com/inward/record.url?scp=85189208354&partnerID=8YFLogxK
U2 - 10.1007/s11060-024-04630-5
DO - 10.1007/s11060-024-04630-5
M3 - Article
C2 - 38563856
AN - SCOPUS:85189208354
SN - 0167-594X
VL - 167
SP - 501
EP - 508
JO - Journal of Neuro-Oncology
JF - Journal of Neuro-Oncology
IS - 3
ER -