TY - JOUR
T1 - A disease network-based deep learning approach for characterizing melanoma
AU - Lai, Xin
AU - Zhou, Jinfei
AU - Wessely, Anja
AU - Heppt, Markus
AU - Maier, Andreas
AU - Berking, Carola
AU - Vera, Julio
AU - Zhang, Le
N1 - Funding Information:
German Federal Ministry of Education and Research (BMBF) (e:Bio‐MelEVIR 031L0073A to Xin Lai and Julio Vera and e:Med‐MelAutim 01ZX1905A to Xin Lai, Andreas Maier and Julio Vera); Staedtler Stiftung (ww/eh 30/16 to Julio Vera); Manfred‐Roth Stiftung to Julio Vera; Matthias Lackas Stiftung to Julio Vera. We also acknowledge support by Friedrich‐Alexander‐Universität Erlangen‐Nürnberg within the funding program Open Access Publishing. Funding information
Publisher Copyright:
© 2021 The Authors. International Journal of Cancer published by John Wiley & Sons Ltd on behalf of UICC.
PY - 2022/3/15
Y1 - 2022/3/15
N2 - Multiple types of genomic variations are present in cutaneous melanoma and some of the genomic features may have an impact on the prognosis of the disease. The access to genomics data via public repositories such as The Cancer Genome Atlas (TCGA) allows for a better understanding of melanoma at the molecular level, therefore making characterization of substantial heterogeneity in melanoma patients possible. Here, we proposed an approach that integrates genomics data, a disease network, and a deep learning model to classify melanoma patients for prognosis, assess the impact of genomic features on the classification and provide interpretation to the impactful features. We integrated genomics data into a melanoma network and applied an autoencoder model to identify subgroups in TCGA melanoma patients. The model utilizes communities identified in the network to effectively reduce the dimensionality of genomics data into a patient score profile. Based on the score profile, we identified three patient subtypes that show different survival times. Furthermore, we quantified and ranked the impact of genomic features on the patient score profile using a machine-learning technique. Follow-up analysis of the top-ranking features provided us with the biological interpretation of them at both pathway and molecular levels, such as their mutation and interactome profiles in melanoma and their involvement in pathways associated with signaling transduction, immune system and cell cycle. Taken together, we demonstrated the ability of the approach to identify disease subgroups using a deep learning model that captures the most relevant information of genomics data in the melanoma network.
AB - Multiple types of genomic variations are present in cutaneous melanoma and some of the genomic features may have an impact on the prognosis of the disease. The access to genomics data via public repositories such as The Cancer Genome Atlas (TCGA) allows for a better understanding of melanoma at the molecular level, therefore making characterization of substantial heterogeneity in melanoma patients possible. Here, we proposed an approach that integrates genomics data, a disease network, and a deep learning model to classify melanoma patients for prognosis, assess the impact of genomic features on the classification and provide interpretation to the impactful features. We integrated genomics data into a melanoma network and applied an autoencoder model to identify subgroups in TCGA melanoma patients. The model utilizes communities identified in the network to effectively reduce the dimensionality of genomics data into a patient score profile. Based on the score profile, we identified three patient subtypes that show different survival times. Furthermore, we quantified and ranked the impact of genomic features on the patient score profile using a machine-learning technique. Follow-up analysis of the top-ranking features provided us with the biological interpretation of them at both pathway and molecular levels, such as their mutation and interactome profiles in melanoma and their involvement in pathways associated with signaling transduction, immune system and cell cycle. Taken together, we demonstrated the ability of the approach to identify disease subgroups using a deep learning model that captures the most relevant information of genomics data in the melanoma network.
U2 - 10.1002/ijc.33860
DO - 10.1002/ijc.33860
M3 - Article
C2 - 34716589
AN - SCOPUS:85119249125
SN - 0020-7136
VL - 150
SP - 1029
EP - 1044
JO - International Journal of Cancer
JF - International Journal of Cancer
IS - 6
ER -