audio
dict
sentence
stringclasses
704 values
{"array":[[-6.287242513280944e-7,5.726764129576623e-7,-8.370452633243985e-7,0.000023753584173391573,(...TRUNCATED)
I feel dizzy after doing a muscular effort.
{"array":[[-8.673769116285257e-6,0.00004531927334028296,0.00008134134986903518,-2.2774734134145547e-(...TRUNCATED)
I break out on my face very frequently
{"array":[[-0.0024882121942937374,-0.0019854202400892973,-0.000599940656684339,-0.002080883597955107(...TRUNCATED)
Sometimes my body feels week without reason
{"array":[[-7.183305569924414e-6,-0.000011165817340952344,-0.000015072306268848479,-7.56359611386869(...TRUNCATED)
There feels like a swollen knot at my shoulderblade with pain shooting from that
{"array":[[-0.00019775085092987865,-0.0000381308636860922,5.4352431106963195e-6,0.000025836563509074(...TRUNCATED)
When I get out of bed in the morning my body feels very weak.
{"array":[[-0.0002683095808606595,-0.0004246756143402308,-0.0005452281911857426,-0.00047876889584586(...TRUNCATED)
"My knee feels weak and it gave way the other day at the top of the stairs. Luckily there was a rai(...TRUNCATED)
{"array":[[-0.0000994889996945858,-0.00020835573377553374,-0.00015093295951373875,-0.000110897322883(...TRUNCATED)
The pain in my ear is unbearable.
{"array":[[0.00004932267256663181,0.00004340361192589626,0.000041274630348198116,0.00002034449789789(...TRUNCATED)
When I wake up in the morning I feel a soreness in my body
{"array":[[0.0004524092946667224,0.0009763484122231603,0.0009873938979580998,0.0005337808397598565,0(...TRUNCATED)
My stomach aches when I eat hot food, why?
{"array":[[0.000017147765902336687,0.00009041911835083738,-0.00026471770252101123,-0.000249132193857(...TRUNCATED)
My throught is so sore.

Data Source
Kaggle Medical Speech, Transcription, and Intent

Context

8.5 hours of audio utterances paired with text for common medical symptoms.

Content

This data contains thousands of audio utterances for common medical symptoms like “knee pain” or “headache,” totaling more than 8 hours in aggregate. Each utterance was created by individual human contributors based on a given symptom. These audio snippets can be used to train conversational agents in the medical field.

This Figure Eight dataset was created via a multi-job workflow. The first involved contributors writing text phrases to describe symptoms given. For example, for “headache,” a contributor might write “I need help with my migraines.” Subsequent jobs captured audio utterances for accepted text strings.

Note that some of the labels are incorrect and some of the audio files have poor quality. I would recommend cleaning the dataset before training any machine learning models.

This dataset contains both the audio utterances and corresponding transcriptions.

What's new
*The data is clean from all columns except for the file_path and phrase
*All Audios are loaded into the DatasetDict as an 1D array, float32
*All Audios are resampled into 16K
*The new structure :
train = {
'audio': {
'path': file_path, the mp3 files is not included here, please visit the kaggle to dowload em
'array': waveform_np,
'sampling_rate': 16000
},
'sentence': the text transcription
}

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Models trained or fine-tuned on Hani89/medical_asr_recording_dataset