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doc/Introduction_to_TF24_IVIM-MRI_CodeCollection_github_and_IVIM_Analysis_using_Python.ipynb
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@@ -11,7 +11,7 @@ | |
# code adapted from MAtlab code by Eric Schrauben: https://github.com/schrau24/XCAT-ERIC | ||
# This code generates a 4D IVIM phantom as nifti file | ||
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def phantom(bvalue, noise, TR=3000, TE=40, motion=False, rician=False, interleaved=False): | ||
def phantom(bvalue, noise, TR=3000, TE=40, motion=False, rician=False, interleaved=False,T1T2=True): | ||
np.random.seed(42) | ||
if motion: | ||
states = range(1,21) | ||
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@@ -23,10 +23,10 @@ def phantom(bvalue, noise, TR=3000, TE=40, motion=False, rician=False, interleav | |
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# Access the variables in the loaded .mat file | ||
XCAT = mat_data['IMG'] | ||
XCAT = XCAT[0:-1:2,0:-1:2,10:160:4] | ||
XCAT = XCAT[-1:0:-2,-1:0:-2,10:160:4] | ||
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D, f, Ds = contrast_curve_calc() | ||
S, Dim, fim, Dpim, legend = XCAT_to_MR_DCE(XCAT, TR, TE, bvalue, D, f, Ds) | ||
S, Dim, fim, Dpim, legend = XCAT_to_MR_DCE(XCAT, TR, TE, bvalue, D, f, Ds,T1T2=T1T2) | ||
if state == 1: | ||
Dim_out = Dim | ||
fim_out = fim | ||
|
@@ -95,15 +95,19 @@ def contrast_curve_calc(): | |
D[8] = 3e-3 # 8 Blood ra | ||
D[10] = 1.37e-3 # 8 Muscle: 10.3389/fresc.2022.910068 | ||
D[13] = 1.5e-3 # 13 liver: Delattre et al. doi: 10.1097/RLI.0b013e31826ef901 | ||
D[14] = 3.0e-3 # 13 Galbladder | ||
D[17] = 1.67e-3 # 17 esophagus : Huang et al. doi: 10.1259/bjr.20170421 | ||
D[18] = 1.67e-3 # 18 esophagus cont : Huang et al. doi: 10.1259/bjr.20170421 | ||
D[20] = 1.5e-3 # 20 stomach wall: Li et al. doi: 10.3389/fonc.2022.821586 | ||
D[21] = 3.0e-3 # 21 stomach content | ||
D[22] = 1.3e-3 # 22 Pancreas (from literature) | ||
D[23] = 2.12e-3 # 23 right kydney cortex : van Baalen et al. Doi: jmri.25519 | ||
D[24] = 2.09e-3 # 23 right kydney medulla : van Baalen et al. Doi: jmri.25519 | ||
D[25] = 2.12e-3 # 23 left kydney cortex : van Baalen et al. Doi: jmri.25519 | ||
D[26] = 2.09e-3 # 23 left kydney medulla : van Baalen et al. Doi: jmri.25519 | ||
D[30] = 1.3e-3 # 30 spleen : Taimouri et al. Doi: 10.1118/1.4915495 | ||
D[34] = 4.1e-4 # 34 spinal cord :doi: 10.3389/fonc.2022.961473 | ||
D[35] = 0.43e-3 # 35 Bone marrow : https://pubmed.ncbi.nlm.nih.gov/30194746/ | ||
D[36] = 3e-3 # 36 artery | ||
D[37] = 3e-3 # 37 vein | ||
D[40] = 1.31e-3 # 40 asc lower intestine : Hai-Jing et al. doi: 10.1097/RCT.0000000000000926 | ||
|
@@ -124,15 +128,19 @@ def contrast_curve_calc(): | |
f[8] = 1.00 # 8 Blood ra | ||
f[10] = 0.10 # 8 Muscle: 10.3389/fresc.2022.910068 | ||
f[13] = 0.11 # 13 liver : Delattre et al. doi: 10.1097/RLI.0b013e31826ef901 | ||
f[14] = 0 # 13 Gal | ||
f[17] = 0.32 # 17 esophagus : Huang et al. doi: 10.1259/bjr.20170421 | ||
f[18] = 0.32 # 18 esophagus cont : Huang et al. doi: 10.1259/bjr.20170421 | ||
f[20] = 0.3 # 20 stomach wall: Li et al. doi: 10.3389/fonc.2022.821586 | ||
f[21] = 0.0 # 20 stomach content | ||
f[22] = 0.15 # 22 Pancreas (from literature) | ||
f[23] = 0.097 # 23 right kydney cortex : van Baalen et al. Doi: jmri.25519 | ||
f[24] = 0.158 # 23 right kydney medulla : van Baalen et al. Doi: jmri.25519 | ||
f[25] = 0.097 # 23 left kydney cortex : van Baalen et al. Doi: jmri.25519 | ||
f[26] = 0.158 # 23 left kydney medulla : van Baalen et al. Doi: jmri.25519 | ||
f[30] = 0.2 # 30 spleen : Taimouri et al. Doi: 10.1118/1.4915495 | ||
f[34] = 0.178 # 34 spinal cord :doi: 10.3389/fonc.2022.961473 | ||
f[35] = 0.145 # 35 Bone marrow : https://pubmed.ncbi.nlm.nih.gov/30194746/ | ||
f[36] = 1.0 # 36 artery | ||
f[37] = 1.0 # 37 vein | ||
f[40] = 0.69 # 40 asc lower intestine : Hai-Jing et al. doi: 10.1097/RCT.0000000000000926 | ||
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@@ -153,15 +161,19 @@ def contrast_curve_calc(): | |
Ds[8] = 0.1 # 8 Blood ra | ||
Ds[10] = 0.0263 # 8 Muscle: 10.3389/fresc.2022.910068 | ||
Ds[13] = 0.1 # 13 liver: Delattre et al. doi: 10.1097/RLI.0b013e31826ef901 | ||
Ds[14] = 0.1 # 14 Gal | ||
Ds[17] = 0.03 # 17 esophagus : Huang et al. doi: 10.1259/bjr.20170421 | ||
Ds[18] = 0.03 # 18 esophagus cont : Huang et al. doi: 10.1259/bjr.20170421 | ||
Ds[20] = 0.012 # 20 stomach wall: Li et al. doi: 10.3389/fonc.2022.821586 | ||
Ds[21] = 0.0 # 20 stomach content | ||
Ds[22] = 0.01 # 22 Pancreas (from literature) | ||
Ds[23] = 0.02 # 23 right kydney cortex : van Baalen et al. Doi: jmri.25519 | ||
Ds[24] = 0.019 # 23 right kydney medulla : van Baalen et al. Doi: jmri.25519 | ||
Ds[25] = 0.02 # 23 left kydney cortex : van Baalen et al. Doi: jmri.25519 | ||
Ds[26] = 0.019 # 23 left kydney medulla : van Baalen et al. Doi: jmri.25519 | ||
Ds[30] = 0.03 # 30 spleen : Taimouri et al. Doi: 10.1118/1.4915495 | ||
Ds[34] = 0.0289 # 34 spinal cord :doi: 10.3389/fonc.2022.961473 | ||
Ds[35] = 0.05 # 35 Bone marrow : | ||
Ds[36] = 0.1 # 36 artery | ||
Ds[37] = 0.1 # 37 vein | ||
Ds[40] = 0.029 # 40 asc lower intestine : Hai-Jing et al. doi: 10.1097/RCT.0000000000000926 | ||
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@@ -175,7 +187,7 @@ def contrast_curve_calc(): | |
return D, f, Ds | ||
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def XCAT_to_MR_DCE(XCAT, TR, TE, bvalue, D, f, Ds, b0=3, ivim_cont = True): | ||
def XCAT_to_MR_DCE(XCAT, TR, TE, bvalue, D, f, Ds, b0=3, ivim_cont = True, T1T2=True): | ||
########################################################################################### | ||
# This script converts XCAT tissue values to MR contrast based on the SSFP signal equation. | ||
# Christopher W. Roy 2018-12-04 # [email protected] | ||
|
@@ -285,7 +297,7 @@ def XCAT_to_MR_DCE(XCAT, TR, TE, bvalue, D, f, Ds, b0=3, ivim_cont = True): | |
Tissue[19] = [1045.5, 37.3, 1201, 44] | ||
Tissue[20] = [981.5, 36, 1232.9, 37.20] | ||
#Tissue[20] = [981.5, 36, 1232.9, 37.20] | ||
Tissue[21] = [0, 0, 0, 0] | ||
Tissue[21] = [2500, 1250, 4000, 2000] | ||
Tissue[22] = [584, 46, 725, 43] | ||
Tissue[23] = [828, 71, 1168, 66] | ||
Tissue[24] = [1412, 85, 1545, 81] | ||
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@@ -351,7 +363,6 @@ def XCAT_to_MR_DCE(XCAT, TR, TE, bvalue, D, f, Ds, b0=3, ivim_cont = True): | |
else: | ||
T1 = Tissue[iTissue, 2] | ||
T2 = Tissue[iTissue, 3] | ||
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if ivim_cont and not np.isnan([D[iTissue], f[iTissue], Ds[iTissue]]).any(): | ||
# note we are assuming blood fraction has the same T1 as tissue fraction here for simplicity. Can be changed in future. | ||
Dtemp=D[iTissue] | ||
|
@@ -362,8 +373,11 @@ def XCAT_to_MR_DCE(XCAT, TR, TE, bvalue, D, f, Ds, b0=3, ivim_cont = True): | |
ftemp=np.random.rand(1)*0.5 | ||
Dstemp=5e-3+np.random.rand(1)*1e-1 | ||
S0 = ivim(bvalue,Dtemp,ftemp,Dstemp) | ||
if T1 > 0 or T2 > 0: | ||
MR = MR + np.tile(np.expand_dims(XCAT == iTissue,3),len(S0)) * S0 * (1 - 2 * np.exp(-(TR - TE / 2) / T1) + np.exp(-TR / T1)) * np.exp(-TE / T2) | ||
if T1T2: | ||
if T1 > 0 or T2 > 0: | ||
MR = MR + np.tile(np.expand_dims(XCAT == iTissue,3),len(S0)) * S0 * (1 - 2 * np.exp(-(TR - TE / 2) / T1) + np.exp(-TR / T1)) * np.exp(-TE / T2) | ||
else: | ||
MR = MR + np.tile(np.expand_dims(XCAT == iTissue,3),len(S0)) * S0 | ||
Dim = Dim + (XCAT == iTissue) * Dtemp | ||
fim = fim + (XCAT == iTissue) * ftemp | ||
Dpim = Dpim + (XCAT == iTissue) * Dstemp | ||
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@@ -403,6 +417,7 @@ def parse_bvalues_file(file_path): | |
parser.add_argument("-n", "--noise", type=float, default=0.0005, help="Noise") | ||
parser.add_argument("-m", "--motion", action="store_true", help="Motion flag") | ||
parser.add_argument("-i", "--interleaved", action="store_true", help="Interleaved flag") | ||
parser.add_argument("-u", "--T1T2", action="store_true", help="weight signal with T1T2") # note, set this to zero when generating test data for unit testing! | ||
args = parser.parse_args() | ||
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if args.bvalues_file and args.bvalue: | ||
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@@ -420,14 +435,15 @@ def parse_bvalues_file(file_path): | |
noise = args.noise | ||
motion = args.motion | ||
interleaved = args.interleaved | ||
T1T2 = args.T1T2 | ||
download_data() | ||
for key, bvalue in bvalues.items(): | ||
bvalue = np.array(bvalue) | ||
sig, XCAT, Dim, fim, Dpim, legend = phantom(bvalue, noise, motion=motion, interleaved=interleaved) | ||
sig, XCAT, Dim, fim, Dpim, legend = phantom(bvalue, noise, motion=motion, interleaved=interleaved,T1T2=T1T2) | ||
# sig = np.flip(sig,axis=0) | ||
# sig = np.flip(sig,axis=1) | ||
res=np.eye(4) | ||
res[2]=2 | ||
res[2,2]=2 | ||
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voxel_selector_fraction = 0.5 | ||
D, f, Ds = contrast_curve_calc() | ||
|
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@@ -14,3 +14,4 @@ tqdm | |
pandas | ||
sphinx | ||
sphinx_rtd_theme | ||
pytest-json-report |
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