#METABOLOMICS WORKBENCH Stopka28_20211206_115314 DATATRACK_ID:2969 STUDY_ID:ST002045 ANALYSIS_ID:AN003329 PROJECT_ID:PR001292
VERSION             	1
CREATED_ON             	January 3, 2022, 5:26 pm
#PROJECT
PR:PROJECT_TITLE                 	massNet: integrated processing and classification of spatially resolved mass
PR:PROJECT_TITLE                 	spectrometry data using deep learning for rapid tumor delineation
PR:PROJECT_TYPE                  	integrated processing and classification of MSI data analysis
PR:PROJECT_SUMMARY               	The attached MSI datasets of GBM and prostate cancer tissues were analyzed in
PR:PROJECT_SUMMARY               	the manuscript by Abdelmoula et al. (bioRxiv 2021.05.06.442938). The below is
PR:PROJECT_SUMMARY               	taken from the abstract: "Motivation: Mass spectrometry imaging (MSI) provides
PR:PROJECT_SUMMARY               	rich biochemical information in a label-free manner and therefore holds promise
PR:PROJECT_SUMMARY               	to substantially impact current practice in disease diagnosis. However, the
PR:PROJECT_SUMMARY               	complex nature of MSI data poses computational challenges in its analysis. The
PR:PROJECT_SUMMARY               	complexity of the data arises from its large size, high dimensionality, and
PR:PROJECT_SUMMARY               	spectral non-linearity. Preprocessing, including peak picking, has been used to
PR:PROJECT_SUMMARY               	reduce raw data complexity, however peak picking is sensitive to parameter
PR:PROJECT_SUMMARY               	selection that, perhaps prematurely, shapes the downstream analysis for tissue
PR:PROJECT_SUMMARY               	classification and ensuing biological interpretation. Results: We propose a deep
PR:PROJECT_SUMMARY               	learning model, massNet, that provides the desired qualities of scalability,
PR:PROJECT_SUMMARY               	nonlinearity, and speed in MSI data analysis. This deep learning model was used,
PR:PROJECT_SUMMARY               	without prior preprocessing and peak picking, to classify MSI data from a mouse
PR:PROJECT_SUMMARY               	brain harboring a patient-derived tumor. The massNet architecture established
PR:PROJECT_SUMMARY               	automatically learning of predictive features, and automated methods were
PR:PROJECT_SUMMARY               	incorporated to identify peaks with potential for tumor delineation. The
PR:PROJECT_SUMMARY               	model’s performance was assessed using cross-validation, and the results
PR:PROJECT_SUMMARY               	demonstrate higher accuracy and a 174-fold gain in speed compared to the
PR:PROJECT_SUMMARY               	established classical machine learning method, support vector machine."
PR:INSTITUTE                     	Brigham and Women’s Hospital
PR:DEPARTMENT                    	Department of Neurosurgery
PR:LABORATORY                    	Nathalie Y.R. Agar
PR:LAST_NAME                     	Abdelmoula
PR:FIRST_NAME                    	Walid
PR:ADDRESS                       	60 Fenwood RD, Boston, MA
PR:EMAIL                         	wahassan@bwh.harvard.edu
PR:PHONE                         	8572149765
#STUDY
ST:STUDY_TITLE                   	massNet: integrated processing and classification of spatially resolved mass
ST:STUDY_TITLE                   	spectrometry data using deep learning for rapid tumor delineation
ST:STUDY_SUMMARY                 	The patient-derived xenograft (PDX) mouse brain tumor model of glioblastoma
ST:STUDY_SUMMARY                 	(GBM) samples were analyzed by 2D MALDI FT ICR MSI.
ST:INSTITUTE                     	Brigham and Women’s Hospital
ST:DEPARTMENT                    	Department of Neurosurgery
ST:LABORATORY                    	Nathalie Y.R. Agar
ST:LAST_NAME                     	Abdelmoula
ST:FIRST_NAME                    	Walid
ST:ADDRESS                       	60 Fenwood RD, Boston, MA
ST:EMAIL                         	wahassan@bwh.harvard.edu
ST:PHONE                         	8572149765
#SUBJECT
SU:SUBJECT_TYPE                  	Mammal
SU:SUBJECT_SPECIES               	Mus musculus
SU:TAXONOMY_ID                   	10090
#FACTORS
#SUBJECT_SAMPLE_FACTORS:         	SUBJECT(optional)[tab]SAMPLE[tab]FACTORS(NAME:VALUE pairs separated by |)[tab]Raw file names and additional sample data
SUBJECT_SAMPLE_FACTORS           	-	1PDX GBM - mouse brain tumor section	sample_id:Dataset1	RAW_FILE_NAME=GBM12_1
SUBJECT_SAMPLE_FACTORS           	-	2PDX GBM - mouse brain tumor section	sample_id:Dataset2	RAW_FILE_NAME=GBM12_2
SUBJECT_SAMPLE_FACTORS           	-	3PDX GBM - mouse brain tumor section	sample_id:Dataset3	RAW_FILE_NAME=GBM22_1
SUBJECT_SAMPLE_FACTORS           	-	4PDX GBM - mouse brain tumor section	sample_id:Dataset4	RAW_FILE_NAME=GBM22_2
SUBJECT_SAMPLE_FACTORS           	-	5PDX GBM - mouse brain tumor section	sample_id:Dataset5	RAW_FILE_NAME=GBM39_1
SUBJECT_SAMPLE_FACTORS           	-	6PDX GBM - mouse brain tumor section	sample_id:Dataset6	RAW_FILE_NAME=GBM39_2
SUBJECT_SAMPLE_FACTORS           	-	7PDX GBM - mouse brain tumor section	sample_id:Dataset7	RAW_FILE_NAME=GBM108_negative
SUBJECT_SAMPLE_FACTORS           	-	8PDX GBM - mouse brain tumor section	sample_id:Dataset8	RAW_FILE_NAME=GBM108_positive
#COLLECTION
CO:COLLECTION_SUMMARY            	As stated in the massNetpaper: "Briefly, 8 GBM tissue sections of 12 μm
CO:COLLECTION_SUMMARY            	thickness were prepared and analyzed using a 9.4 Tesla SolariX mass spectrometer
CO:COLLECTION_SUMMARY            	(Bruker Daltonics, Billerica, MA) in the positive ion mode with spatial
CO:COLLECTION_SUMMARY            	resolution of 100 μm. The MSI data was exported from SCiLS lab 2020a (Bruker,
CO:COLLECTION_SUMMARY            	Bremen, Germany) in the standardized format imzML (Race et al., 2012) and
CO:COLLECTION_SUMMARY            	converted to the HDF5 format (Folk et al., 2011) for deep learning analysis."
CO:SAMPLE_TYPE                   	PDX GBM - mouse brain tumor section
#TREATMENT
TR:TREATMENT_SUMMARY             	N/A
#SAMPLEPREP
SP:SAMPLEPREP_SUMMARY            	As stated in the massNet paper "Briefly, 8 GBM tissue sections of 12 μm
SP:SAMPLEPREP_SUMMARY            	thickness were prepared and analyzed using a 9.4 Tesla SolariX mass spectrometer
SP:SAMPLEPREP_SUMMARY            	(Bruker Daltonics, Billerica, MA) in the positive ion mode with spatial
SP:SAMPLEPREP_SUMMARY            	resolution of 100 μm. The MSI data was exported from SCiLS lab 2020a (Bruker,
SP:SAMPLEPREP_SUMMARY            	Bremen, Germany) in the standardized format imzML (Race et al., 2012) and
SP:SAMPLEPREP_SUMMARY            	converted to the HDF5 format (Folk et al., 2011) for deep learning analysis."
#CHROMATOGRAPHY
CH:CHROMATOGRAPHY_TYPE           	None (Direct infusion)
CH:INSTRUMENT_NAME               	none
CH:COLUMN_NAME                   	none
#ANALYSIS
AN:ANALYSIS_TYPE                 	MS
#MS
MS:INSTRUMENT_NAME               	Bruker Solarix FT-ICR-MS
MS:INSTRUMENT_TYPE               	FT-ICR
MS:MS_TYPE                       	MALDI
MS:ION_MODE                      	POSITIVE
MS:MS_COMMENTS                   	Bruker software
MS:MS_RESULTS_FILE               	ST002045_AN003329_Results.txt	UNITS:Da	Has m/z:Yes	Has RT:No	RT units:No RT data
#END