word1
stringlengths
2
13
word2
stringlengths
3
26
adr.
adrenalin
afd.
afdeling
afd.led.
afdelingsledelsen
afd.læge
afdelingslæge
afs.
afsnit
a-grafi
arteriografi
ak-behandling
antikoagulationsbehandling
akt.
aktivitet
alk
alkalisk
an
anæstesi
ang.
angående
anæst.
anæstesi
arb.
arbitrær
art.
articulatio
beh.
behandling
biomikr.
biomikroskopi
bl.pr.
blodprøver
bordl
borderline
bs
blodsukker
bt
blodtryk
ca.
cirka
camp.
campimetri
cirk
cirkulation
cl
centiliter
cm
centimeter
cmv
cytomegalovirus
cns
centralnervesystemet
co
kulmonoxid
co2
kuldioxid
cont.
continuat
cresc.
crescat
csv
cerebrospinalvæske
cyl.
cylinder
dagl.
daglig
dem.
deminuatur
deminuat.
deminuatur
detumesc.
detumescerende
dg
decigram
dgl.
daglig
dialysev
dialysevæske
dl
deciliter
dr.
doktor
d-sonde
duodenal-sonde
dv
dagvagt
eeg
elektroencephalografi
ekg
elektrokardiogram
el.
eller
enzk.
enzymkoncentration
enzm.
enzymmængde
epi
epidural
epo
erythropoietin
ery
erythrocyt
erys
erythrocytter
evt.
eventuelt
fhv.
forhenværende
forb.
forbindelse
forte
stærk
fv
forvagt
fys.
fysioterapi
gangfkt.
gangfunktionen
hast.
hastighed
hb
hæmoglobin
hd
hæmodialyse
hdf
hæmodiafiltration
hgb
hæmoglobin
hhv.
henholdsvis
hpt
hudperfusionstest
h-reg.
hnpcc-registret
hvp
hovedpine
hø.
højre
if.
ifølge
ilt-sat
iltsaturation
indh.
indhold
init.
initialt
inkl.
inklusive
insp
inspiratorisk
isot
isotonisk
jf.
jævnfør
jr.
journal
kl.
klokken
koag
koagulation
komb.
kombineret
komp.
komparativ
konf
konference
konkl.
konklusion
koord.
koordinerende
kpa
kilopascal
led.
ledende
ledv
ledvæske
lejr.
lejring
lkc
leukocytter
lkcs
leukocytter
lm
larynxmaske
lok.
lokal
max.
maximum
mb.
morbus
medpt.
medpatient
meq
milliequivalenter
mg
milligram
mhz
megahertz

Danish medical word embeddings

MeDa-We was trained on a Danish medical corpus of 123M tokens. The word embeddings are 300-dimensional and are trained using FastText.

The embeddings were trained for 10 epochs using a window size of 5 and 10 negative samples.

The development of the corpus and word embeddings is described further in our paper.

We also trained a transformer model on the developed corpus which can be found here.

Citing

@inproceedings{pedersen-etal-2023-meda,
    title = "{M}e{D}a-{BERT}: A medical {D}anish pretrained transformer model",
    author = "Pedersen, Jannik  and
      Laursen, Martin  and
      Vinholt, Pernille  and
      Savarimuthu, Thiusius Rajeeth",
    booktitle = "Proceedings of the 24th Nordic Conference on Computational Linguistics (NoDaLiDa)",
    month = may,
    year = "2023",
    address = "T{\'o}rshavn, Faroe Islands",
    publisher = "University of Tartu Library",
    url = "https://aclanthology.org/2023.nodalida-1.31",
    pages = "301--307",
}
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