metadata
language:
- en
widget:
- text: >-
Extract lots from given text.
1. Age 18 to 75 years, inclusive. 2. Study participants must have a
diagnosis of symptomatic multiple myeloma requiring systemic therapy and
are eligible for the planned ASCT. 3. Untreated bone marrow sample was
shipped to Princess Margaret Hospital for MRD assay. 4. Must have been
treated with a velcade-based induction regimen. No limit to the number of
cycles of induction. 5. Study participants in whom the minimum stem cell
dose of 2.0 x 106 cluster of differentiation (CD)34+ cells/kg has been
collected. 6. Eastern Cooperative Oncology Group (ECOG) Performance Status
of 0-2. 7. Negative beta-human chorionic gonadotropin (β-HCG) pregnancy
test in all females of child-bearing potential (FOCBP). 8. Ability to
provide written informed consent prior to initiation of any study-related
procedures, and ability, in the opinion of the Principal Investigator, to
comply with all requirements of the study.
example_title: Translation
- text: >-
Extract lots from given text.
age ≥18 years * patients with de novo or secondary AML, with an
unfavorable or intermediate karyotype (according to the 2017 ELN
classification), or patients with relapsing AML who may receive
second-line treatment * not candidates for intensive induction, for the
following reasons* 75 years or ≥ 18 to 74 years and at least one of the
following comorbidities: PS ≥ 2 or a history of heart failure requiring
treatment or LVEF ≤ 50% or chronic stable angina or FEV1 ≤ 65% or DLCO ≤
65% or creatinine clearance <45 ml / min; or liver damage with total
bilirubin> 1.5 N or other comorbidities that the hematologist considers
incompatible with intensive treatment * ineligible for a classic
allogeneic hematopoietic stem cell transplant due to the presence of
co-morbidities or too high a risk of toxicity >70 years old or at least
one of the following comorbidities: PS ≥ 2 or a history of heart failure
requiring treatment or LVEF ≤ 50% or chronic stable angina or FEV1 ≤ 65%
or DLCO ≤ 65% or creatinine clearance <45 ml / min; or liver damage with
total bilirubin> 1.5 N * may receive chemotherapy with hypomethylating
agents have a partially compatible (haplo-identical) major family donor
(≥18 years old) eligible for lymphocyte donation.
example_title: Example 2
library_name: transformers
tags:
- lot
- line of therapy
license: apache-2.0
pipeline_tag: text2text-generation
base_model: google-t5/t5-small
Uses
from transformers import T5Tokenizer, T5ForConditionalGeneration
tokenizer = T5Tokenizer.from_pretrained("alpeshsonar/lot-t5-small-filter")
model = T5ForConditionalGeneration.from_pretrained("alpeshsonar/lot-t5-small-filter")
input_text = """"Extract lots from given text.
* age ≥18 years * patients with de novo or secondary AML, with an unfavorable or intermediate karyotype (according to the 2017 ELN classification), or patients with relapsing AML who may receive second-line treatment * not candidates for intensive induction, for the following reasons* 75 years or ≥ 18 to 74 years and at least one of the following comorbidities: PS ≥ 2 or a history of heart failure requiring treatment or LVEF ≤ 50% or chronic stable angina or FEV1 ≤ 65% or DLCO ≤ 65% or creatinine clearance <45 ml / min; or liver damage with total bilirubin> 1.5 N or other comorbidities that the hematologist considers incompatible with intensive treatment * ineligible for a classic allogeneic hematopoietic stem cell transplant due to the presence of co-morbidities or too high a risk of toxicity >70 years old or at least one of the following comorbidities: PS ≥ 2 or a history of heart failure requiring treatment or LVEF ≤ 50% or chronic stable angina or FEV1 ≤ 65% or DLCO ≤ 65% or creatinine clearance <45 ml / min; or liver damage with total bilirubin> 1.5 N * may receive chemotherapy with hypomethylating agents have a partially compatible (haplo-identical) major family donor (≥18 years old) eligible for lymphocyte donation.
"""
input_ids = tokenizer(input_text, return_tensors="pt").input_ids
outputs = model.generate(input_ids,max_new_tokens=1024)
print(tokenizer.decode(outputs[0],skip_special_tokens=True))