University of Pittsburgh, USA
Hepatocellular carcinoma (HCC) is one of the
most lethal malignancies for human. Early diagnosis of HCC is crucial in
reducing the mortality of the disease. In this study, a panel of 9 fusion
transcripts in the serum samples from 136 individuals using TaqMan qRT-PCR was
analyzed. Seven fusion genes were frequently detected in the serum samples of
HCC patients, including MAN2A1-FER (100%), SLC45A2-AMACR (62.3%),
ZMPSTE24-ZMYM4 (62.3%), PTEN-NOLC1 (57.4%), CCNH-C5orf30
(55.7%), STAMBPL1-FAS (26.2%) and PCMTD1-SNTG1 (16.4%). Machine
learning models were constructed based on serum fusion gene levels to predict
HCC occurrence in the training cohort using leave-one-out-cross-validation
approach. One of the machine learning models called 4-fusion genes logistic
regression model (MAN2A1-FER<40, CCNH-C5orf30<38,
SLC45A2-AMACR<41, PTEN-NOLC1<40) produced a
91.5% accuracy in the training cohort. The same model generated an accuracy of
83.3% in the testing cohort. When serum α-fetal protein (AFP) level was
incorporated into the machine learning model, a 2-fusion gene+AFP logistic
regression model (MAN2A1-FER<40, CCNH-C5orf30<38,
AFP) was found to generate an accuracy of 94.8% in the training cohort. The
same model generated 95% accuracy in both the testing cohort and the combined
cohorts. Cancer treatment reduced most of the serum fusion transcript levels.
Serum fusion gene machine learning models may serve as important tools in
screening HCC and monitoring the impact of HCC treatment.
Dr. Luo has been studying molecular mechanisms of human malignancies in the last 36 years. Currently, he is a Professor of Pathology and Director of High Throughput Genome Center at University of Pittsburgh. In the last 30 years, Dr. Luo has been largely focusing on the genetic and molecular mechanism of human cancers such as prostate cancer. He is one of the pioneers in utilizing high throughput gene expression and genome analyses to analyze field effects in prostate cancer and liver cancer. He is also the first in using methylation array and whole genome methylation sequencing to analyze prostate cancer. He and his colleague helped to develop an ultra-low error synthetic long-read sequencing technology called LOOPSeq that can be utilized to quantify mRNA isoforms and mutation isoform distributions in single cell level. His group has discovered 21 novel fusion genes in prostate, liver and colon cancers. Subsequently, his group discovered that many of these fusion genes are recurrent in many other types of human cancers. His group also developed a genome intervention strategy targeting at the chromosomal breakpoint of fusion gene to treat cancers. Recently, his group has been focusing on machine learning prediction of prostate and liver cancers. Overall, these findings advance our understanding of how cancer develops and behaves, and lay down the foundation for better future diagnosis and treatment for human malignancies.