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ca
n
ce
r
s
.
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ec
au
s
e
o
f
th
e
p
h
y
s
ics
p
ar
a
m
eter
v
al
u
e
r
an
g
e
o
f
I
L
C
an
d
I
DC
w
as
d
if
f
er
e
n
t
[
9
]
.
So
,
p
h
y
s
ics
p
ar
am
eter
co
n
tai
n
i
n
g
o
n
th
e
m
a
m
m
o
g
r
a
m
co
u
ld
b
e
u
s
ed
a
s
th
e
in
p
u
t
v
ar
iab
le
f
o
r
KNN
m
et
h
o
d
to
d
eter
m
in
e
w
h
et
h
er
it b
elo
n
g
ed
to
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L
C
o
r
I
DC
t
y
p
es.
T
h
e
s
u
p
er
io
r
ity
o
f
t
h
e
m
eth
o
d
th
at
w
e
p
r
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o
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ed
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as
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tp
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r
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m
e
r
ical
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o
r
m
w
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h
it
s
v
al
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e
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ce
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tai
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o
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e
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er
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o
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j
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tiv
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it
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as
d
if
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er
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t
w
it
h
th
e
p
r
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s
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et
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o
d
th
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s
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h
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al
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h
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h
t
h
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lt
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b
j
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d
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ep
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er
s
.
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id
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o
th
e
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?
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e
w
a
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ted
to
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elp
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ec
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e
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ad
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t c
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ce
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.
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h
e
ai
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o
f
t
h
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w
r
it
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s
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o
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tr
o
d
u
ce
a
n
e
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m
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o
d
to
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etec
t
th
e
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y
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e
s
o
f
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D
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an
d
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L
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h
is
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p
at
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o
lo
g
y
.
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A
D
s
y
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te
m
t
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w
e
h
av
e
d
e
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elo
p
ed
is
u
s
ed
as
th
e
co
m
p
ar
i
s
o
n
o
f
FN
A
B
r
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lt
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e
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o
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e
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o
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g
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o
p
er
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.
2.
M
E
T
H
O
DS
2.
1
.
Sa
m
ple
T
h
e
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ch
w
a
s
ap
p
r
o
v
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b
y
e
th
ic
s
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m
m
i
ttee
o
f
San
g
lah
Ho
s
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ital,
De
n
p
asar
,
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ali,
I
n
d
o
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esia.
Nu
m
b
er
:
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2
0
4
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1
4
.
2
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P
/
2
0
1
7
.
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h
e
s
a
m
p
les
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er
e
ta
k
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at
r
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o
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f
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o
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t
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r
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r
o
m
th
e
d
atab
ase
o
f
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ter
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o
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p
ital
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r
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n
d
o
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r
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m
a
Me
d
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k
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ital
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asar
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n
d
o
n
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,
San
g
lah
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n
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r
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d
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n
tr
al
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en
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asar
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ali,
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n
d
o
n
esia)
.
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h
e
s
a
m
p
les
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n
s
is
ted
o
f
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m
ag
e
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o
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L
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t
y
p
e
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n
d
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im
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2
.
2
.
Dev
elo
ped
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et
ho
d
Gu
n
a
w
an
[
9
]
u
s
ed
p
h
y
s
ics
p
a
r
a
m
eter
to
d
eter
m
i
n
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h
i
s
to
p
ath
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g
y
t
y
p
es
o
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r
ea
s
t
ca
n
ce
r
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y
u
s
in
g
Sp
ec
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atter
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r
o
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p
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g
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et
h
o
d
.
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n
th
i
s
r
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ch
,
w
e
d
ev
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lo
p
ed
th
e
u
s
e
o
f
p
h
y
s
ics
p
ar
am
eter
as
t
h
e
i
n
p
u
t
o
f
KNN
m
et
h
o
d
to
d
eter
m
i
n
e
h
is
to
p
ath
o
lo
g
y
t
y
p
e
o
f
b
r
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s
t c
an
ce
r
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t
h
as
b
ee
n
o
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s
er
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at
t
h
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ab
n
o
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m
alit
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,
esp
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h
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u
s
p
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ar
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it
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t
h
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ig
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er
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en
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it
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t
h
a
n
th
e
n
ei
g
h
b
o
r
p
ix
el
lik
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n
th
e
Fig
u
r
e
1
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d
Fig
u
r
e
2
.
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e
c
o
u
n
ted
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h
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ar
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m
eter
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li
k
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o
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m
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e
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eth
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ap
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lied
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ig
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l
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th
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m
ic
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o
lo
g
ic
r
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ch
as
t
h
e
s
tan
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ar
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g
o
al.
C
r
o
p
p
in
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th
e
s
u
s
p
icio
u
s
ar
ea
.
T
h
en
,
it
is
d
o
n
e
th
e
r
ep
ar
atio
n
o
f
th
e
i
m
ag
e
q
u
al
it
y
to
clar
if
y
th
e
m
a
m
m
o
g
r
a
m
i
m
ag
e.
2.
4.
T
he
ca
lcula
t
io
n o
f
ph
y
s
ics
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er
Af
ter
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e
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s
s
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ith
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9
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m
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An
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SS
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o
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t
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t
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w
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cc
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ate
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ase
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AD
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ac
y
w
as
7
0
%,
th
e
p
r
ec
is
io
n
w
as
9
8
%
,
an
d
er
r
o
r
r
a
te
w
as
3
0
%.
T
w
o
r
ad
io
lo
g
is
ts
an
d
ex
p
er
ts
o
f
p
ath
o
lo
g
y
a
n
d
an
ato
m
y
f
o
u
n
d
o
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r
r
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lt
w
a
s
q
u
ite
s
at
is
f
y
in
g
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d
co
u
ld
b
e
r
eliab
le.
4
.
CO
NCLU
SI
O
N
T
h
e
C
A
D
s
y
s
te
m
th
at
w
e
d
ev
elo
p
ed
b
y
u
s
i
n
g
p
h
y
s
ics
p
ar
a
m
eter
w
a
s
v
er
y
h
elp
f
u
l
in
c
lass
i
f
y
in
g
h
is
to
p
at
h
o
lo
g
y
t
y
p
e
o
f
b
r
ea
s
t
ca
n
ce
r
.
Ma
m
m
o
g
r
a
m
i
m
a
g
e
w
a
s
v
er
y
d
if
f
ic
u
lt
to
d
etec
t
h
i
s
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ath
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t
y
p
e
s
.
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v
en
,
t
h
e
R
ad
io
lo
g
y
ex
p
er
ts
w
er
e
n
o
t a
b
le
to
id
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ti
f
y
it f
o
r
1
0
0
%.
T
h
e
u
tili
za
tio
n
o
f
p
h
y
s
ics
p
ar
a
m
eter
to
class
if
y
h
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s
to
p
ath
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l
o
g
y
t
y
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es
o
f
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r
ea
s
t
ca
n
ce
r
h
elp
ed
th
e
ex
p
er
ts
o
f
R
ad
io
lo
g
y
to
g
et
t
h
e
s
ec
o
n
d
o
p
in
io
n
.
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h
e
f
i
n
al
ai
m
o
f
t
h
e
C
A
D
s
y
s
te
m
t
h
at
w
e
d
ev
elo
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ed
f
o
r
m
a
m
m
o
g
r
ap
h
y
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as
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d
etec
t
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n
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u
c
h
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le
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io
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h
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t
s
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ize
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as
o
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te
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n
eg
lecte
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n
m
a
m
m
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g
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ap
h
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n
o
f
h
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ath
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g
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t
y
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e
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n
cr
ea
s
ed
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h
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p
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tu
n
it
y
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o
r
w
o
m
en
to
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e
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cc
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f
u
l
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n
t
h
e
tr
ea
t
m
e
n
t
o
f
b
r
ea
s
t c
an
ce
r
.
Ou
r
r
esear
c
h
w
as
esp
ec
iall
y
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o
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s
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o
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h
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to
p
ath
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D
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n
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s
e
d
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h
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ics
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cla
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at
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es
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t
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r
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ig
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t
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h
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at
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o
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g
y
t
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es
o
f
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DC
a
n
d
I
L
C
.
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h
en
,
w
e
u
s
ed
th
e
p
a
r
a
m
eter
as
t
h
e
in
p
u
t
v
ar
iab
le
o
f
KNN
m
eth
o
d
to
tak
e
d
ec
is
io
n
w
h
et
h
er
it in
c
lu
d
ed
I
DC
o
r
I
L
C
h
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ath
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g
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cc
o
r
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i
n
g
to
th
e
e
x
p
er
ts
o
f
r
ad
io
lo
g
y
,
th
e
r
es
u
lt
p
r
o
d
u
c
ed
b
y
th
e
C
A
D
s
y
s
te
m
th
a
t
w
e
d
ev
elo
p
ed
w
a
s
q
u
ite
s
ati
s
f
y
i
n
g
an
d
co
u
l
d
b
e
r
eliab
le,
an
d
c
o
u
ld
ass
is
t
th
e
ex
p
er
t
o
f
r
ad
io
lo
g
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d
iag
n
o
s
i
n
g
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r
ea
s
t
ca
n
ce
r
.
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NT
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th
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v
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r
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r
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:
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r
ec
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R
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m
m
u
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it
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Ser
v
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(
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)
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h
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o
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la
h
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p
asar
)
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ar
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t
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u
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h
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ato
m
y
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ar
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m
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g
lah
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asar
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ali)
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r
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ag
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ar
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ad
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m
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o
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ad
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ar
t
m
en
t
o
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SU.
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r
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asar
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ali)
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ab
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ata
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cto
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m
an
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u
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tio
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f
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SUP
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g
la
h
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s
p
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p
asar
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ali)
,
d
r
.
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u
tu
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n
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k
a
w
ati,
MP
H
(
P
r
esid
en
t
Dir
ec
to
r
o
f
R
SU.
P
r
i
m
a
Me
d
ik
a
Ho
s
p
ita
l,
Den
p
asar
,
B
ali)
.
RE
F
E
R
E
NC
E
S
[1
]
S
a
to
k
o
Na
k
a
n
o
,
M
a
sa
h
ik
o
Oh
tsu
k
a
,
Ak
e
m
i
M
ib
u
,
a
t
a
l
.
,
“
Dia
g
n
o
stic i
m
a
g
in
g
stra
teg
y
f
o
r
M
DC
T
-
o
r
M
RI
-
d
e
tec
ted
b
re
a
st l
e
sio
n
s:
u
se
o
f
targ
e
ted
so
n
o
g
ra
p
h
y
”
,
BM
C
M
e
d
ica
l
Ima
g
in
g
,
2
0
1
2
1
2
:1
3
.
[2
]
Jim
m
y
O
k
e
ll
o
,
Ha
rriet
Kise
m
b
o
,
S
a
m
Bu
g
e
z
a
,
a
t
a
l
.
,
“
Bre
a
st
c
a
n
c
e
r
d
e
tec
ti
o
n
u
si
n
g
so
n
o
g
ra
p
h
y
in
w
o
m
e
n
w
it
h
m
a
m
m
o
g
r
a
p
h
ica
ll
y
d
e
n
se
b
re
a
sts
”
,
BM
C
M
e
d
ica
l
Ima
g
in
g
,
2
0
1
4
1
4
:4
1
.
[3
]
S
y
l
v
ia H.
He
y
wa
n
g
-
Kö
b
ru
n
n
e
r
,
A
strid
Ha
c
k
e
r
,
S
tefa
n
S
e
d
lac
e
k
,
“
A
d
v
a
n
ta
g
e
s an
d
Disa
d
v
a
n
tag
e
s o
f
M
a
m
m
o
g
ra
p
h
y
S
c
re
e
n
in
g
”
,
Bre
a
st Ca
re
(
Ba
se
l)
,
2
0
1
1
J
u
n
,
v
o
l.
6
,
n
o
.
3
,
p
p
.
1
9
9
-
2
0
7
.
[4
]
F
e
rn
a
n
d
a
P
h
il
a
d
e
l
p
h
o
A
P
,
G
a
b
ri
e
la
M
,
M
a
ria
Ju
li
a
G
C,
a
t
a
l
.
,
“
M
a
g
n
e
ti
c
re
so
n
a
n
c
e
im
a
g
in
g
-
ra
d
io
g
u
id
e
d
o
c
c
u
lt
les
io
n
l
o
c
a
li
z
a
ti
o
n
(ROL
L
)
in
b
re
a
st
c
a
n
c
e
r
u
sin
g
T
c
-
9
9
m
m
a
c
ro
-
a
g
g
r
e
g
a
ted
a
lb
u
m
in
a
n
d
d
ist
il
led
w
a
t
e
r
c
o
n
tro
l
”
,
BM
C
M
e
d
ica
l
Ima
g
i
n
g
,
2
0
1
3
1
3
:
3
3
.
[5
]
A
rjan
P
S
c
h
o
u
ten
v
a
n
d
e
r
V
e
ld
e
n
,
Ca
rla
Bo
e
tes
,
P
e
ter
Bu
l
t
,
a
t
a
l
.
,
“
M
a
g
n
e
ti
c
re
so
n
a
n
c
e
i
m
a
g
in
g
in
siz
e
a
ss
e
ss
m
e
n
t
o
f
in
v
a
siv
e
b
re
a
st ca
r
c
in
o
m
a
w
it
h
a
n
e
x
ten
siv
e
in
trad
u
c
tal
c
o
m
p
o
n
e
n
t
”
,
BM
C
M
e
d
ica
l
Ima
g
i
n
g
,
2
0
0
9
9
:
5
.
[6
]
Ba
te
m
a
n
,
T
i
m
o
th
y
,
“
A
d
v
a
n
tag
e
s
a
n
d
d
isa
d
v
a
n
tag
e
s
o
f
P
ET
a
n
d
S
P
ECT
in
a
b
u
s
y
c
li
n
ica
l
p
ra
c
ti
c
e
”
,
J
o
u
rn
a
l
o
f
Nu
c
lea
r
S
p
in
g
e
r
J
o
u
r
n
a
l,
Ja
n
1
9
,
2
0
1
2
.
[7
]
Ro
m
u
a
ld
o
Ba
rro
so
-
S
o
u
sa
a
n
d
Otto
M
e
tsg
e
r
-
F
il
h
o
,
“
Dif
fe
re
n
c
e
b
e
tw
e
e
n
in
v
a
si
v
e
lo
b
u
ler
a
n
d
in
v
a
siv
e
d
u
k
tal
c
a
rc
in
o
m
a
o
f
th
e
b
re
a
st:
r
e
su
lt
a
n
d
th
e
ra
p
e
u
t
ic
im
p
li
c
a
ti
o
n
s
”
,
T
h
e
ra
p
e
u
ti
c
Ad
v
a
n
c
e
s
in
M
e
d
ica
l
O
n
c
o
lo
g
y
,
v
o
l.
8
n
o
.
4
,
p
p
.
2
6
1
-
2
6
6
.
[8
]
S
u
n
i
l
RL
.
,
L
a
n
OE.
,
S
tu
a
rt
JS.
,
a
t
a
l
.
,
“
W
HO
Clas
si
f
ic
a
ti
o
n
o
f
T
u
m
o
u
rs
o
f
T
h
e
Br
e
a
st
”
,
In
tern
a
ti
o
n
a
l
Ag
e
n
c
y
f
o
r
Re
se
a
rc
h
o
n
Ca
n
c
e
r,
4
th
Ed
i
ti
o
n
,
Ly
o
n
,
2
0
1
2
.
[9
]
A
.
A
.
N.
G
u
n
a
w
a
n
,
S
u
p
a
rd
i
,
Dh
a
r
m
a
w
a
n
,
“
Re
a
d
a
b
il
it
y
In
c
re
a
se
Of
M
a
m
m
o
g
ra
p
h
y
X
-
Ra
y
P
h
o
to
s
Re
su
lt
s
In
De
ter
m
in
in
g
T
h
e
Bre
a
st
Ca
n
c
e
r
Histo
p
a
th
o
lo
g
y
Ty
p
e
s
Us
in
g
S
p
e
c
ial
P
a
tt
e
r
n
Cr
o
p
p
in
g
W
it
h
P
h
y
sic
a
l
P
a
ra
m
e
ter
”
,
Ad
v
a
n
c
e
s i
n
Ap
p
li
e
d
Ph
y
sic
s,
2
0
1
4
,
v
o
l.
2
,
n
o
.
1
,
p
p
.
43
-
52
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Evaluation Warning : The document was created with Spire.PDF for Python.
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Evaluation Warning : The document was created with Spire.PDF for Python.