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Multiplexed nanomaterial-assisted laser desorption/ionization for pan-cancer diagnosis and classification
by
Zhang, Xingdong
, Zhou, Jian
, Li, Xiaomu
, Zheng, Jie
, Ji, Meiling
, Duan, Xiangfeng
, Hu, Qinsheng
, Deng, Yangdong
, Wang, Yunbing
, Yang, Li
, Zhang, Hua
, Liu, Zhen
, Xu, Jianmin
, Hu, Cheng
, Liu, Weiren
, Xu, Yaolin
, Bai, Jingwei
, Zhang, Shumang
, Liu, Tianshu
, Lou, Wenhui
, Yang, Weige
, Wang, Hua
, Zhong, Sheng
, Tan, Lijie
, Tian, Rong
, Zhao, Lin
, Ying, Hao
, Li, Xiaoying
, Yu, Yiyi
, Li, Yanyan
, Lu, Yan
, Jiang, Jingjing
in
147/135
/ 147/143
/ 49/98
/ 631/114/1305
/ 631/67/2322
/ 639/301/357
/ 82/103
/ 82/47
/ 82/58
/ Antigens, Neoplasm - blood
/ Biomarkers
/ Biomarkers, Tumor - blood
/ Biopsy
/ Cancer
/ Cancer screening
/ China
/ Classification
/ Cohort Studies
/ Desorption
/ Diagnosis
/ Early Detection of Cancer - methods
/ Female
/ Humanities and Social Sciences
/ Humans
/ Ionization
/ Ions
/ Lasers
/ Learning algorithms
/ Machine Learning
/ Male
/ Mass spectrometry
/ Mass spectroscopy
/ Medical diagnosis
/ Medical screening
/ Metabolic disorders
/ Metabolites
/ multidisciplinary
/ Multiplexing
/ Nanomaterials
/ Nanostructures - chemistry
/ Neoplasms - classification
/ Neoplasms - diagnosis
/ Science
/ Science (multidisciplinary)
/ Scientific imaging
/ Sensitivity
/ Sensitivity and Specificity
/ Spectroscopy
/ Thyroid
/ Thyroid cancer
/ Tumors
2022
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Multiplexed nanomaterial-assisted laser desorption/ionization for pan-cancer diagnosis and classification
by
Zhang, Xingdong
, Zhou, Jian
, Li, Xiaomu
, Zheng, Jie
, Ji, Meiling
, Duan, Xiangfeng
, Hu, Qinsheng
, Deng, Yangdong
, Wang, Yunbing
, Yang, Li
, Zhang, Hua
, Liu, Zhen
, Xu, Jianmin
, Hu, Cheng
, Liu, Weiren
, Xu, Yaolin
, Bai, Jingwei
, Zhang, Shumang
, Liu, Tianshu
, Lou, Wenhui
, Yang, Weige
, Wang, Hua
, Zhong, Sheng
, Tan, Lijie
, Tian, Rong
, Zhao, Lin
, Ying, Hao
, Li, Xiaoying
, Yu, Yiyi
, Li, Yanyan
, Lu, Yan
, Jiang, Jingjing
in
147/135
/ 147/143
/ 49/98
/ 631/114/1305
/ 631/67/2322
/ 639/301/357
/ 82/103
/ 82/47
/ 82/58
/ Antigens, Neoplasm - blood
/ Biomarkers
/ Biomarkers, Tumor - blood
/ Biopsy
/ Cancer
/ Cancer screening
/ China
/ Classification
/ Cohort Studies
/ Desorption
/ Diagnosis
/ Early Detection of Cancer - methods
/ Female
/ Humanities and Social Sciences
/ Humans
/ Ionization
/ Ions
/ Lasers
/ Learning algorithms
/ Machine Learning
/ Male
/ Mass spectrometry
/ Mass spectroscopy
/ Medical diagnosis
/ Medical screening
/ Metabolic disorders
/ Metabolites
/ multidisciplinary
/ Multiplexing
/ Nanomaterials
/ Nanostructures - chemistry
/ Neoplasms - classification
/ Neoplasms - diagnosis
/ Science
/ Science (multidisciplinary)
/ Scientific imaging
/ Sensitivity
/ Sensitivity and Specificity
/ Spectroscopy
/ Thyroid
/ Thyroid cancer
/ Tumors
2022
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Multiplexed nanomaterial-assisted laser desorption/ionization for pan-cancer diagnosis and classification
by
Zhang, Xingdong
, Zhou, Jian
, Li, Xiaomu
, Zheng, Jie
, Ji, Meiling
, Duan, Xiangfeng
, Hu, Qinsheng
, Deng, Yangdong
, Wang, Yunbing
, Yang, Li
, Zhang, Hua
, Liu, Zhen
, Xu, Jianmin
, Hu, Cheng
, Liu, Weiren
, Xu, Yaolin
, Bai, Jingwei
, Zhang, Shumang
, Liu, Tianshu
, Lou, Wenhui
, Yang, Weige
, Wang, Hua
, Zhong, Sheng
, Tan, Lijie
, Tian, Rong
, Zhao, Lin
, Ying, Hao
, Li, Xiaoying
, Yu, Yiyi
, Li, Yanyan
, Lu, Yan
, Jiang, Jingjing
in
147/135
/ 147/143
/ 49/98
/ 631/114/1305
/ 631/67/2322
/ 639/301/357
/ 82/103
/ 82/47
/ 82/58
/ Antigens, Neoplasm - blood
/ Biomarkers
/ Biomarkers, Tumor - blood
/ Biopsy
/ Cancer
/ Cancer screening
/ China
/ Classification
/ Cohort Studies
/ Desorption
/ Diagnosis
/ Early Detection of Cancer - methods
/ Female
/ Humanities and Social Sciences
/ Humans
/ Ionization
/ Ions
/ Lasers
/ Learning algorithms
/ Machine Learning
/ Male
/ Mass spectrometry
/ Mass spectroscopy
/ Medical diagnosis
/ Medical screening
/ Metabolic disorders
/ Metabolites
/ multidisciplinary
/ Multiplexing
/ Nanomaterials
/ Nanostructures - chemistry
/ Neoplasms - classification
/ Neoplasms - diagnosis
/ Science
/ Science (multidisciplinary)
/ Scientific imaging
/ Sensitivity
/ Sensitivity and Specificity
/ Spectroscopy
/ Thyroid
/ Thyroid cancer
/ Tumors
2022
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Multiplexed nanomaterial-assisted laser desorption/ionization for pan-cancer diagnosis and classification
Journal Article
Multiplexed nanomaterial-assisted laser desorption/ionization for pan-cancer diagnosis and classification
2022
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Overview
As cancer is increasingly considered a metabolic disorder, it is postulated that serum metabolite profiling can be a viable approach for detecting the presence of cancer. By multiplexing mass spectrometry fingerprints from two independent nanostructured matrixes through machine learning for highly sensitive detection and high throughput analysis, we report a laser desorption/ionization (LDI) mass spectrometry-based liquid biopsy for pan-cancer screening and classification. The
M
ultiplexed
N
anomaterial-
A
ssisted
L
DI for
C
ancer
I
dentification (MNALCI) is applied in 1,183 individuals that include 233 healthy controls and 950 patients with liver, lung, pancreatic, colorectal, gastric, thyroid cancers from two independent cohorts. MNALCI demonstrates 93% sensitivity at 91% specificity for distinguishing cancers from healthy controls in the internal validation cohort, and 84% sensitivity at 84% specificity in the external validation cohort, with up to eight metabolite biomarkers identified. In addition, across those six different cancers, the overall accuracy for identifying the tumor tissue of origin is 92% in the internal validation cohort and 85% in the external validation cohort. The excellent accuracy and minimum sample consumption make the high throughput assay a promising solution for non-invasive cancer diagnosis.
As cancer is increasingly considered a metabolic disorder, it is postulated that serum metabolite profiling can be a viable approach for detecting the presence of cancer. Here, the authors report a machine learning model using mass spectrometry-based liquid biopsy data for pan-cancer screening and classification.
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